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Export promotion through exchange rate changes: exchange rate depreciation or stabilization?

1. Introduction

Exchange rate movements affect exports in two ways--rate depreciation and rate volatility (risk). The two effects have received considerable attention since the collapse of fixed exchange rates in the early 1970s. But, no research considers the net (total) effect on exports of the two potentially offsetting effects. This paper investigates the net effect for eight Asian countries Noun 1. Asian country - any one of the nations occupying the Asian continent
Asian nation

country, land, state - the territory occupied by a nation; "he returned to the land of his birth"; "he visited several European countries"
 with Engle's (2002) dynamic conditional correlation (DCC (1) (Direct Cable Connection) A Windows 95/98 feature that allows PCs to be cabled together for data transfer. DCC actually sets up a network connection between the two machines. ) bivariate bi·var·i·ate  
adj.
Mathematics Having two variables: bivariate binomial distribution.

Adj. 1.
 GARCH-M model that simultaneously estimates time-varying correlation and exchange rate risk. The net effect relates to the goal of a foreign exchange intervention A procedure used in a lawsuit by which the court allows a third person who was not originally a party to the suit to become a party, by joining with either the plaintiff or the defendant. .

Depreciation lowers the foreign currency price of exports and probably increases the quantity of exports and export revenue in domestic currency. Conditions may exist, however, where export revenue falls. Highly inelastic inelastic

Of or relating to the demand for a good or service when quantity purchased varies little in response to price changes in the good or service.
 foreign import demand leads to failing export revenue. Ambiguity Ambiguity
Delphic oracle

ultimate authority in ancient Greece; often speaks in ambiguous terms. [Gk. Hist.: Leach, 305]

Iseult’s vow

pledge to husband has double meaning. [Arth.
 also arises if export production incorporates high import content, since the domestic cost or price of exports rises with depreciation. During periods of appreciation, exporters might price to market, lowering their domestic currency price to maintain export market share.

Theory and empirical evidence exhibits ambiguity as to the effect of the exchange rate on exports and export revenue. Junz and Rhomberg (1973) and Wilson Wilson, city (1990 pop. 36,930), seat of Wilson co., E N.C., in a rich agricultural region; inc. 1849. It is a commercial and industrial center with a large tobacco market. Manufactures include textile goods (especially clothing), metal products, and processed foods.  and Takacs (1979) find that devaluation devaluation, decreasing the value of one nation's currency relative to gold or the currencies of other nations. It is usually undertaken as a means of correcting a deficit in the balance of payments.  increases exports for developed countries with fixed exchange rates, and Bahmani-Oskooee and Kara Kara (kär`ə), river, c.140 mi (230 km) long, NE European and NW Siberian Russia. It flows N from the N Urals into the Kara Sea, forming part of the traditional border between European and Asian Russia. It is navigable in its lower course.  (2003) find similar results with flexible rates. In contrast, Athukorala (1991), Athukorala and Menon Menon (IPA: [meːnoːn]) is a Nair surname common amongst the people in the South Indian state of Kerala. Surname used by Nair community in south kerala, Pillai, have the same status. The name "Menon" might have derived from "Menavan", which means "scribe" in Malayalam/tulu.  (1994), Abeysinghe and Yeok (1998), and Wilson and Tat (2001) find that appreciation does not lower exports in some Asian countries.

With fluctuations in the exchange rate, exchange rate risk could, theoretically, lower exports due to profit risk as developed by Ethier (1973). De Grauwe (1988) suggests, however, that exporters might increase volume to offset potential revenue loss. Broll and Eckwert (1999) note that the value of the real option to export might increase with risk depending on the risk aversion risk aversion

The tendency of investors to avoid risky investments. Thus, if two investments offer the same expected yield but have different risk characteristics, investors will choose the one with the lowest variability in returns.
 of exporters. Klaassen (2004) argues that the effect of exchange rate risk is an empirical issue.

The empirical evidence on the effects of exchange rate risk is also mixed. Pozo (1992) uncovers a negative effect on the United Kingdom's (UK) exports to the United States United States, officially United States of America, republic (2005 est. pop. 295,734,000), 3,539,227 sq mi (9,166,598 sq km), North America. The United States is the world's third largest country in population and the fourth largest country in area. . Chowdhury Chowdhury (Urdu: چوہدری, Bengali: চৌধুরী) is a term in Indo-Aryan languages, literally meaning "a holder of four" or "owner of the fourth part".  (1993) and Arize The Arize is a river of France, an affluent of the Garonne. It arises at 1,355 in the massif of Arize, in the Pyrenees, in the department of Ariège. Its length is 67 km.

In its first four or five kilometers it is called the Péguère. It formed the grotto of Mas-d'Azil.
 (1995, 1996, 1997) find negative effects on U.S., European European

emanating from or pertaining to Europe.


European bat lyssavirus
see lyssavirus.

European beech tree
fagussylvaticus.

European blastomycosis
see cryptococcosis.
, and G7 exports. Weliwita, Ekanayake, and Tsujii (1999) report negative effects for Sri Lanka's exports to six developed countries. Fang, Lai, and Thompson Thompson, city, Canada
Thompson, city (1991 pop. 14,977), central Man., Canada, on the Burntwood River. A mining town, it developed after large nickel deposits were discovered in the area in 1956.
 (2006) discover negative effects for Japan, Singapore Singapore (sĭng`gəpôr, sĭng`ə–, sĭng'gəpôr`), officially Republic of Singapore, republic (2005 est. pop. 4,426,000), 240 sq mi (625 sq km). , and Taiwan Taiwan (tī`wän`), Portuguese Formosa, officially Republic of China, island nation (2005 est. pop. 22,894,000), 13,885 sq mi (35,961 sq km), in the Pacific Ocean, separated from the mainland of S China by the 100-mi-wide (161-km) Taiwan . Arize, Osang, and Slottje (2000) and Arize, Malindretos, and Kasibhatla (2003) identify negative effects on less-developed countries Less-developed countries (LDCs)

Also known as emerging markets. Countries who's per capita GDP is below a World Bank-determined level.
 (LDC LDC

See: Less developed countries


LDC

See less developed country (LDC).
) exports using a moving sample standard deviation In statistics, the average amount a number varies from the average number in a series of numbers.

(statistics) standard deviation - (SD) A measure of the range of values in a set of numbers.
 model. In contrast, Asseery and Peel (1991) detect positive effects for Australia Australia (ôstrāl`yə), smallest continent, between the Indian and Pacific oceans. With the island state of Tasmania to the south, the continent makes up the Commonwealth of Australia, a federal parliamentary state (2005 est. pop. , Japan, Germany Germany (jûr`mənē), Ger. Deutschland, officially Federal Republic of Germany, republic (2005 est. pop. 82,431,000), 137,699 sq mi (356,733 sq km). , and the United States, and a negative effect for the UK; Kroner and Lastrapes (1993) uncover positive effects for France, Germany, and Japan, but negative effects for the UK and the United States; McKenzie and Brooks (1997) uncover positive effects for Germany and the United States; Klaassen (2004) discerns no effect on monthly bilateral bilateral /bi·lat·er·al/ (-lat´er-al) having two sides, or pertaining to both sides.

bi·lat·er·al
adj.
1. Having or formed of two sides; two-sided.

2.
 U.S. exports to the other G7 countries.

These contrary results motivate the present paper, the first to examine the net effect of depreciation and exchange rate risk using the DCC bivariate GARCH-M model. Even if exchange rate depreciation positively affects exports, the associated exchange rate risk effect could offset the positive effect, leading to a negative net effect. Our empirical results address the goal of a foreign exchange intervention. That is, does intervention stimulate exports by depreciating de·pre·ci·ate  
v. de·pre·ci·at·ed, de·pre·ci·at·ing, de·pre·ci·ates

v.tr.
1. To lessen the price or value of.

2. To think or speak of as being of little worth; belittle.
 the currency or by reducing exchange rate fluctuations? The conventional view argues that exchange rate depreciation stimulates exports. The more recent view argues that exchange rate risk hampers exports, providing the rationale rationale (rash´nal´),
n the fundamental reasons used as the basis for a decision or action.
 to reduce exchange rate fluctuations. Both arguments appear in the present paper, which examines the net effect. Assuming a positive correlation Noun 1. positive correlation - a correlation in which large values of one variable are associated with large values of the other and small with small; the correlation coefficient is between 0 and +1
direct correlation
 between exchange rate depreciation and exchange rate risk, a positive net effect supports a depreciation policy, whereas a negative net effect supports reducing exchange rate fluctuation Fluctuation

A price or interest rate change.
.

To measure the net effect, we employ monthly time-series data on bilateral exports from eight Asian countries, Indonesia Indonesia (ĭn'dənē`zhə), officially Republic of Indonesia, republic (2005 est. pop. 241,974,000), c.735,000 sq mi (1,903,650 sq km), SE Asia, in the Malay Archipelago. , Japan, Korea Korea (kôrē`ə, kə–), Korean Hanguk or Choson, region and historic country (85,049 sq mi/220,277 sq km), E Asia. , Malaysia Malaysia (məlā`zhə), independent federation (2005 est. pop. 23,953,000), 128,430 sq mi (332,633 sq km), Southeast Asia. The official capital and by far the largest city is Kuala Lumpur; Putrajaya is the adminstrative capital. , Philippines Philippines
 officially Republic of the Philippines

Island country, western Pacific Ocean, on an archipelago off the southeast coast of Asia. Area: 122,121 sq mi (316,294 sq km). Population (2005 est.): 84,191,000.
, Singapore, Taiwan, and Thailand Thailand (tī`lănd, –lənd), Thai Prathet Thai [land of the free], officially Kingdom of Thailand, constitutional monarchy (2005 est. pop. 65,444,000), 198,455 sq mi (514,000 sq km), Southeast Asia. , to the United States from 1979 to 2003. Strong reasons exist to examine Asian bilateral exports. First, Klaassen (2004) shows that exchange rate risk exhibits too little variability for developed countries to elicit e·lic·it  
tr.v. e·lic·it·ed, e·lic·it·ing, e·lic·its
1.
a. To bring or draw out (something latent); educe.

b. To arrive at (a truth, for example) by logic.

2.
 an effect on exports and proposes studying the exchange rate risk effect using data on developing countries. Fang, Lai, and Thompson (2006) provide evidence that some Asian countries experience more volatile exchange rates than certain European Monetary System European Monetary System, arrangement by which most nations of the European Union (EU) linked their currencies to prevent large fluctuations relative to one another. It was organized in 1979 to stabilize foreign exchange and counter inflation among members.  (EMS) currencies. Second, Table 1 shows that the United States accounts for a substantial portion of exports from these Asian countries. The average U.S. share of total exports during our sample period ranges from 16% for Indonesia to 34% for Philippines. The bilateral approach avoids asymmetric A difference between two opposing modes. It typically refers to a speed disparity. For example, in asymmetric operations, it takes longer to compress and encrypt data than to decompress and decrypt it. Contrast with symmetric. See asymmetric compression and public key cryptography.  responses across exchange rates in highly aggregated data, bringing more focus to the net effect of the exchange rate movement. Exports in these countries respond differently to exchange rate depreciation and risk.

Our use of the bivariate GARCH-M model differs from previous techniques in several ways. Bahmani-Oskooee and Kara (2003) and Wilson and Tat (2001) use cointegration Cointegration is an econometric property of time series variables. If two or more series are themselves non-stationary, but a linear combination of them is stationary, then the series are said to be cointegrated.  to examine the effect of depreciation on exports and the trade balance. Arize, Osang, and Slottje (2000) show that this technique overestimates the effect of depreciation when a negative exchange rate risk effect exists. The present paper simultaneously estimates the effects of exchange rate depreciation and risk. Moving standard deviations of the exchange rate maintain the hypothesis of homoskedasticity while serving as a proxy for heteroskedastic Heteroskedastic

A measure in statistics that refers to the variance of the errors over the sample.

Notes:
Most financial instruments, such as stocks, follow a heteroskedastic error pattern.
 risk in Chowdhury (1993) and Arize, Osang, and Slottje (2000). Our present method improves on those models examining the relationship between means and variances, as in Engle En´gle

n. 1. A favorite; a paramour; an ingle.
v. t. 1. To cajole or coax, as favorite.
I 'll presently go and engle some broker.
- B. Jonson.
, Lilien, and Robins (1987) and Bollerslev, Chou Chou (jō), dynasty of China, which ruled from c.1027 B.C. to 256 B.C. The pastoral Chou people migrated from the Wei valley NW of the Huang He c.1027 B.C. and overthrew the Shang dynasty. The Chou built their capital near modern Xi'an in 1027 B.C. , and Kroner (1992). Exchange rate risk is conditional and time varying, as shown by Hodrick and Srivastava (1984). GARCH GARCH Generalized Autoregressive Conditional Heteroskedasticity  methods allow time dependence as in Pozo (1992), McKenzie and Brooks (1997), and Weliwita, Ekanayake, and Tsujii (1999), but their two-step procedure may produce inefficient estimates as noted in Klaassen (2004). The present paper uses simultaneous bivariate estimation estimation

In mathematics, use of a function or formula to derive a solution or make a prediction. Unlike approximation, it has precise connotations. In statistics, for example, it connotes the careful selection and testing of a function called an estimator.
. The effects of exchange rate changes depend on the export adjustment speed. Time structure is an important characteristic of international trade as argued by Goldstein Gold·stein , Joseph Leonard Born 1940.

American biochemist. He shared a 1985 Nobel Prize for discoveries related to cholesterol metabolism.
 and Khan khan

Historically, the ruler or monarch of a Mongol tribe. Early on a distinction was made between the title of khan and that of khakan, or “great khan.” Later the term khan was adopted by the Seljuq and Khwarezm-Shah dynasties as a title for the highest
 (1985) and Klaassen (2004). Dynamic features of our present distributed lag export model and the DCC estimator distinguish it from one-period adjustment multivariate The use of multiple variables in a forecasting model.  GARCH-M models assuming a constant correlation between the exchange rate and exports over time such as Kroner and Lastrapes (1993) and Fang, Lai, and Thompson (2006). The present DCC estimator improves estimation efficiency over the constant correlation models as noted in Engle (2002), Tse and Tsui (2002), and Tsay (2002).

The rest of this paper unfolds as follows. Section 2 specifies the elements of the DCC bivariate GARCH-M model to examine the net effect of exchange rate depreciation and its risk on exports. Section 3 describes the data, presents empirical results, and derives the net effects. Section 4 analyzes quantitatively the net effects of exchange rate changes. Section 5 summarizes the empirical findings and provides concluding remarks.

2. The DCC Bivariate GARCH-M Model and the Net Effect

The nonstructural reduced-form export equation of Rose (1991), Pozo (1992), and Klaassen (2004) from the two-country imperfect imperfect: see tense.  substitute model provides the building block of our empirical analysis, which examines the net effect of exchange rate movement on Asian bilateral exports to the United States. Real export revenue (x) depends on real foreign income (y), the real exchange rate (q), and real exchange rate risk ([h.sub.q]). Real export revenue equals nominal export revenue in domestic currency deflated de·flate  
v. de·flat·ed, de·flat·ing, de·flates

v.tr.
1.
a. To release contained air or gas from.

b. To collapse by releasing contained air or gas.

2.
 by the consumer price index (CPI (1) (Characters Per Inch) The measurement of the density of characters per inch on tape or paper. A printer's CPI button switches character pitch.

(2) (Counts Per I
). Our maintained hypotheses include the following. Foreign income, the U.S. industrial production index, should exhibit a positive effect on real export revenue. The real exchange rate, the domestic currency price of the U.S. dollar times the ratio of U.S. to domestic CPIs, should also exhibit a positive effect on real export revenue. The real exchange rate eliminates potential ambiguity from adjusting price levels. The effect of exchange rate risk proves uncertain theoretically and empirically.

To capture short-run adjustments of the variables, the following eclectic e·clec·tic  
adj.
1. Selecting or employing individual elements from a variety of sources, systems, or styles: an eclectic taste in music; an eclectic approach to managing the economy.

2.
 dynamic conditional correlation bivariate GARCH-M model provides the framework for investigating the net exchange rate effect.

[MATHEMATICAL EXPRESSION A group of characters or symbols representing a quantity or an operation. See arithmetic expression.  NOT REPRODUCIBLE re·pro·duce  
v. re·pro·duced, re·pro·duc·ing, re·pro·duc·es

v.tr.
1. To produce a counterpart, image, or copy of.

2. Biology To generate (offspring) by sexual or asexual means.
 IN ASCII ASCII or American Standard Code for Information Interchange, a set of codes used to represent letters, numbers, a few symbols, and control characters. Originally designed for teletype operations, it has found wide application in computers. ] (1)

[DELTA]l[q.sub.t] = [s.sub.0] + [s.sub.1][[epsilon].sub.q,t-1] + [2.summation summation n. the final argument of an attorney at the close of a trial in which he/she attempts to convince the judge and/or jury of the virtues of the client's case. (See: closing argument)  over (i=l)][[gamma].sub.i][MD.sub.i] + [[epsilon].sub.q,t] (2)

[[epsilon].sub.t]/[[psi PSI - Portable Scheme Interpreter ].sub.t-1] ~ Student-t(v) (3)

[h.sub.x,t] = [[alpha].sub.0] + [[alpha].sub.1][[epsilon].sup.2.sub.x,t-1] + [[alpha].sub.2][h.sub.x,t-1] (4)

[h.sub.q,t] = [[beta].sub.0] + [[beta].sub.1] [[epsilon].sup.2.sub.q,t-1] + [[beta].sub.2][h.sub.q,t-1] + [2 summation over (i)][[lambda].sub.i][VD.sub.i] (5)

[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (6)

[eta].sub.t] = [D.sup.-1.sub.t][[epsilon].sub.t] (7)

[Q.sub.t] = [bar.[rho].sub.xq] (1 - [[theta Theta

A measure of the rate of decline in the value of an option due to the passage of time. Theta can also be referred to as the time decay on the value of an option. If everything is held constant, then the option will lose value as time moves closer to the maturity of the option.
].sub.1] - [[theta.sub.2]) + [[theta.sub.1] [[eta].sub.t-1] [[theta]'.sub.t-1] + [[theta].sub.2] [Q.sub.t-1] (8)

[R.sub.t] = diag [{[Q.sub.t]}.sup.-1] [Q.sub.t] diag [{[Q.sub.t]}.sup.-1] (9)

where [DELTA]l[x.sub.t] [equivalent to] 100 x (ln [x.sub.t]- ln [x.sub.t-1]), [DELTA]l[y.sub.t] [equivalent to] 100 x (ln [y.sub.t] - ln [y.sub.t-1]) and [DELTA][lq.sub.t] [equivalent to] 100 x (ln [q.sub.t] - ln [q.sub.t-1]). The lag structure of the mean equation of [DELTA][lx.sub.t] is selected by Akaike Information Criterion Akaike's information criterion, developed by Hirotsugu Akaike under the name of "an information criterion" (AIC) in 1971 and proposed in Akaike (1974), is a measure of the goodness of fit of an estimated statistical model. It is grounded in the concept of entropy.  (AIC AIC Association des Infermières Canadiennes. ). The MA component picks up serial dependence of [DELTA][lq.sub.t]. And, thus, [[epsilon].sub.x,t] and [[epsilon].sub.q,t] are white noise. We assume that the residual matrix, [[epsilon].sub.t], conditional on the information set [[psi].sub.t-1] available at time t - 1 follows a bivariate Student t-distribution t-distribution

see t statistic.
 with degrees of freedom v. Our sample includes the Asian financial crisis in 1997, which exhibited dramatic movements in exchange rates in most Asian countries. The dummy variables This article is not about "dummy variables" as that term is usually understood in mathematics. See free variables and bound variables.

In regression analysis, a dummy variable
 [MD.sub.i] and [VD.sub.i] capture extraordinary exchange rate changes in the mean and the variance The discrepancy between what a party to a lawsuit alleges will be proved in pleadings and what the party actually proves at trial.

In Zoning law, an official permit to use property in a manner that departs from the way in which other property in the same locality
 equations of [DELTA][lq.sub.t]. Conditional variances In statistics, conditional variance is a special form of the variance. If we have a conditional distribution Y|X the conditional variance is defined as



where
 are [h.sub.x,t] and [h.sub.q,t] measured by the GARCH(1,1) process, respectively, for exports and the exchange rate. The presence of the square root of [h.sub.q,t], [h.sup.1/2.sub.q,t], in the mean equation of [DELTA][lx.sub.t] makes the system a bivariate GARCH-M model. Conditions, [[alpha].sub.i] > 0 [[beta].sub.i] > 0, [[lambda].sub.i] > 0, [[alpha].sub.1] + [[alpha].sub.2] < 1, and [[beta].sub.1] + [[beta].sub.2] < 1, ensure positive and stable conditional variances of [[epsilon].sub.x,t] and [[epsilon].sub.q,t]. If [[alpha].sub.2] or [[beta].sub.2] equal zero, the process reduces to ARCH(1). The matrix [D.sup.2.sub.t] contains [h.sub.x,t] and [h.sub.q,t] along the principal diagonal principal diagonal
n.
The diagonal in a square matrix that goes from the upper left corner to the lower right corner.

Noun 1.
 and [[eta].sub.t] is the standardized standardized

pertaining to data that have been submitted to standardization procedures.


standardized morbidity rate
see morbidity rate.

standardized mortality rate
see mortality rate.
 residual matrix. [Q.sub.t] is the covariance matrix In statistics and probability theory, the covariance matrix is a matrix of covariances between elements of a vector. It is the natural generalization to higher dimensions of the concept of the variance of a scalar-valued random variable.  of [[eta].sub.t], following a GARCH(1,1) process. [[bar.[rho]].sub.xq] is the unconditional HEIR, UNCONDITIONAL. A term used in the civil law, adopted by the Civil Code of Louisiana. Unconditional heirs are those who inherit without any reservation, or without making an inventory, whether their acceptance be express or tacit. Civ. Code of Lo. art. 878.

UNCONDITIONAL.
 correlation of exports and the exchange rates over the sample period. [[theta].sub.1] and [[theta].sub.2] must exceed zero and their sum ([[theta].sub.1] + [[theta].sub.2]) must fall below one to ensure [Q.sub.t] is positively defined and mean reverting re·vert  
intr.v. re·vert·ed, re·vert·ing, re·verts
1. To return to a former condition, practice, subject, or belief.

2. Law To return to the former owner or to the former owner's heirs.
. [R.sub.t], is the conditional correlation matrix Noun 1. correlation matrix - a matrix giving the correlations between all pairs of data sets
statistics - a branch of applied mathematics concerned with the collection and interpretation of quantitative data and the use of probability theory to estimate population
 composed of time-varying correlations. Equations (1) to (9) constitute the DCC estimator proposed by Engle (2002). When [[theta].sub.1] and [[theta].sub.2] both equal zero, the model reduces to the Bollerslev (1990) constant conditional coefficient coefficient /co·ef·fi·cient/ (ko?ah-fish´int)
1. an expression of the change or effect produced by variation in certain factors, or of the ratio between two different quantities.

2.
 estimator.

Let [PHI phi
n.
Symbol The 21st letter of the Greek alphabet.


PHI,
n See health information, protected.
] denote de·note  
tr.v. de·not·ed, de·not·ing, de·notes
1. To mark; indicate: a frown that denoted increasing impatience.

2.
 the parameters in [D.sup.2.sub.t] (that includes all parameters in Eqns. 1-5) and [THETA] the parameters in [R.sub.t] (that includes [[theta].sub.1] and [[theta].sub.2]), then the log likelihood function of the bivariate t-distribution in the maximization procedure is given as follows:

L([PHI],[THETA] = [T.summation over (t=1)][L.sub.t]([PHI],[THETA]) (10)

where [L.sub.t]([PHI],[THETA]) = ln [GAMMA]((v + 2)/2) - ln [GAMMA] (v/2) - ln[[pi](v - 2)] - [1/2] ln/[D.sub.t][R.sub.t][D.sub.t]/ - [(v + 2)/2] ln(1 + ([[eta]'.sub.t][D.sup.-1.sub.t][R.sup.-1.sub.t][D.sup.1.sub.t] [[eta].sub.t])/(v - 2)) and [GAMMA](*) is the Gamma function In mathematics, the Gamma function (represented by the capitalized Greek letter Γ) is an extension of the factorial function to real and complex numbers. For a complex number z with positive real part it is defined by

.

The model focuses on the effects of exchange rate movement on exports in equilibrium equilibrium, state of balance. When a body or a system is in equilibrium, there is no net tendency to change. In mechanics, equilibrium has to do with the forces acting on a body. . The reduced-form export equation includes exchange rate depreciation and risk as well as the rate of change of foreign income as explanatory ex·plan·a·to·ry  
adj.
Serving or intended to explain: an explanatory paragraph.



ex·plan
 variables. The sign and significance of the estimated coefficients ([[??].sub.i]) in Equation 1 provide a straightforward test of the relationship between exports and depreciation, where their sum ([summation][[??].sub.i]) should exceed zero. That is, exchange rate depreciation improves exports. Of particular interest are the signs and magnitudes of the estimated coefficients of exchange rate risk ([h.sup.1/2.sub.q,t] in Equation 1. If exporters cut their exports to minimize profit uncertainty of their export revenue when exchange rate risk rises, then the sum of the [[??].sub.i]s ([SIGMA][[??].sub.i]) should fall below zero. If, however, exporters intend to offset potential losses or to use options markets to hedge, then the sum ([SIGMA][[??].sub.i]) should exceed zero. In the dynamic adjustment process, both positive and negative transitory TRANSITORY. That which lasts but a short time, as transitory facts that which may be laid in different places, as a transitory action.  effects may exist, causing the sum ([SIGMA][[??].sub.i]) to equal zero.

To assess the net effects, we evaluate the total contribution of exchange rate depreciation and its risk on export growth. That is, we consider the sign and significance of the net effect ([SIGMA][[??].sub.i] [DELTA][lq.sub.t-1] + [SIGMA] [[??].sub.i] [h.sup.1/2.sub.q,t-i]) in Equation 1, which depends on each of the estimates and the magnitudes of [DELTA][lq.sub.t] and [h.sup.1/2.sub.q,t]. Since [[epsilon].sub.x,t] in the estimated export Equation 1 is white noise, the calculated sum appropriately interprets the net effect of exchange rate depreciation and its risk on actual export growth. The net effect exceeds zero, if the positively estimated depreciation contribution ([SIGMA][[??].sub.i] [DELTA][lq.sub.t-i]) dominates the negatively estimated exchange risk effect ([SIGMA][[??].sub.i][h.sup.1/2.sub.q,t-i]), or the latter is positive. The net effect falls below zero when the negative risk effect dominates. Either a positive or a negative net effect can occur. If the net effect does not differ statistically from zero, then changes of the exchange rate exhibit no net effect on exports.

3. Data and Empirical Results

For the eight countries studied, the bilateral export variable equals monthly seasonally adjusted Seasonally adjusted

Mathematically adjusted by moderating a macroeconomic indicator (e.g., oil prices/imports) so that relative comparisons can be drawn from month to month all year.
 real export revenue from the United States between January 1979 and April 2003 with a base year of 1995. All data come from the International Financial Statistics and Direction of Trade of the IMF IMF

See: International Monetary Fund


IMF

See International Monetary Fund (IMF).
, the Main Economic Indicators Economic indicators

The key statistics of the economy that reveal the direction the economy is heading in; for example, the unemployment rate and the inflation rate.
 of the OECD OECD: see Organization for Economic Cooperation and Development. , and the AREMOS data set of Taiwan. Table 2 reports preliminary statistics for logarithmic logarithmic

pertaining to logarithm.


logarithmic relationship
when the logs of two variables plotted against each other create a straight line.
 differences of real export revenue and the real exchange rate. In the sample, every country experienced depreciation and export growth, on average. Thailand experienced the highest average export growth at 1.031% with a depreciation of 0.196%. Indonesia experienced the highest monthly depreciation at 0.336% with an export growth of 0.486%. It appears that depreciation encourages exports, on average, but with different effects.

With standard deviations as the measure of unconditional risk, Indonesia exhibits the most volatile export revenue and real exchange rate, whereas Japan and Singapore exhibit the least volatile export revenue and real exchange rate. Real export revenue volatility exceeds exchange rate volatility in every country. Indonesia's standard deviation of [DELTA][lq.sub.t] is about 4.5 times of that of Singapore, but the two countries have almost the same rate of export growth. For other countries, standard deviations of [DELTA][lq.sub.t] are close, but apparently with different rates of export growth. A general impression of how real exchange rate volatility affects exports does not emerge from standard deviations and extreme values.

Skewness Skewness

A statistical term used to describe a situation's asymmetry in relation to a normal distribution.

Notes:
A positive skew describes a distribution favoring the right tail, whereas a negative skew describes a distribution favoring the left tail.
 statistics reject [DELTA][lx.sub.t] symmetry symmetry, generally speaking, a balance or correspondence between various parts of an object; the term symmetry is used both in the arts and in the sciences.  at the 5% level for Taiwan and [DELTA][lq.sub.t] symmetry for every country except Singapore and Taiwan. Kurtosis Kurtosis

A statistical measure used to describe the distribution of observed data around the mean.

Notes:
Used generally in the statistical field, it describes trends in charts.
 statistics for [DELTA][lx.sub.t] and [DELTA][lq.sub.t] imply that all series show leptokurticity with fat tails. Jarque-Bera tests In statistics, the Jarque-Bera test is a goodness-of-fit measure of departure from normality, based on the sample kurtosis and skewness. The test statistic JB is defined as

 reject normality normality, in chemistry: see concentration.  for all variables and countries, suggesting the use of the Student t-distribution in model estimation.

The Ljung-Box Q statistic statistic,
n a value or number that describes a series of quantitative observations or measures; a value calculated from a sample.


statistic

a numerical value calculated from a number of observations in order to summarize them.
 tests for autocorrelation Autocorrelation

The correlation of a variable with itself over successive time intervals. Sometimes called serial correlation.
 and the number of lags (k) affects its performance. Tsay (2002) suggests choosing k = ln(T), where T equals the number of observations (291), implying that k = 5.67, and the autocorrelations tests run to 6 lags. Ljung-Box statistics indicate autocorrelation in [DELTA][lx.sub.t] and [DELTA][lq.sub.t] for all countries. Ljung-Box statistics for squared [DELTA][lx.sub.t] and [DELTA][lq.sub.t] suggest time-varying variance for both series in all countries except for [DELTA][lq.sub.t] in Taiwan. To capture the dynamic structure and to generate white noise residuals, we specify AR(2) and MA(1) processes for the mean equation of [DELTA][lx.sub.t] and [DELTA][lq.sub.t], respectively, and GARCH(1,1) for the two variance equations.

Valid inference (logic) inference - The logical process by which new facts are derived from known facts by the application of inference rules.

See also symbolic inference, type inference.
 in GARCH models requires stationary Stationary can mean:
  • Fixed in position, or mode: immobile.
  • Unchanging in condition or character.
  • In statistics and probability: a stationary process.
  • In mathematics: a stationary point.
  • In mathematics: a stationary set.
 variables. After selecting lag lengths by the AIC, the augmented Dickey-Fuller (ADF (1) (Application Development Facility) An IBM programmer-oriented mainframe application generator that runs under IMS.

(2) (Automatic Document Feeder) A paper stacker that feeds one sheet of paper at a time into the unit.
) test indicates that [DELTA][lx.sub.t] and [DELTA][lq.sub.t] individually exhibit stationary [I(0)] series at the 5% level.

The correlation coefficient Correlation Coefficient

A measure that determines the degree to which two variable's movements are associated.

The correlation coefficient is calculated as:
 between the two monthly logarithmic differenced series ranges from 0.018 in Taiwan to 0.259 in the Philippines. (1) The correlation changes over time, appearing to increase in recent years for most countries. Thus, the DCC estimator proves appropriate to assess the net effect in that it captures time-varying correlation between export revenue and the real exchange rate.

In the DCC estimator, each conditional variance term follows a univariate univariate adjective Determined, produced, or caused by only one variable  GARCH formulation formulation /for·mu·la·tion/ (for?mu-la´shun) the act or product of formulating.

American Law Institute Formulation
. Preliminary analysis shows that the standard univariate GARCH(1,1) model for [DELTA][lx.sub.t] performs adequately for all countries. For [DELTA][lq.sub.t], not surprisingly, unstable unstable,
adj 1. not firm or fixed in one place; likely to move.
2. capable of undergoing spontaneous change. A nuclide in an unstable state is called
radioactive. An atom in an unstable state is called
excited.
 variance processes emerge in Indonesia, Korea, Malaysia, the Philippines, and Thailand because the Asian financial crisis that began in Thailand during July 1997 increased exchange market volatility immediately. Neglecting structural breaks may bias upward GARCH estimates of persistence (1) In a CRT, the time a phosphor dot remains illuminated after being energized. Long-persistence phosphors reduce flicker, but generate ghost-like images that linger on screen for a fraction of a second.  in variance, vitiating the use of GARCH to estimate the mean equation. Perron Per´ron

n. 1. (Arch.) An out-of-door flight of steps, as in a garden, leading to a terrace or to an upper story; - usually applied to mediævel or later structures of some architectural pretensions.
 (1989, 1997) suggests identifying breaks by examining data and using dummy variables to capture shifts in mean or variance processes. (2)

One-time shocks appear as a single pulse in the exchange rate depreciation series and as a mean shift in volatility. Dummy variables enter the mean equations for Indonesia and Thailand and the variance equations for Indonesia, Korea, Malaysia, the Philippines, and Thailand to capture their particular patterns. In the mean equation, the two dummies for Indonesia are [MD.sub.1] = 1 for t= 1983:04, [MD.sub.2] = 1 for t = 1986:09, and 0 otherwise; for Thailand, [MD.sub.1] = 1 for t = 1981:07, [MD.sub.2] = 1 for t = 1984:11, and 0 otherwise. In the variance equation, for Indonesia dummies are [VD.sub.1] = 1 for t [greater than or equal to] 1997:07, and 0 otherwise; for Korea [VD.sub.1] = 1 for t [greater than or equal to] 1997:07, and 0 otherwise; for Malaysia [VD.sub.1] = 1 for 1997:07 [less than or equal to] t [less than or equal to] 1998:12, and 0 otherwise; for the Philippines [VD.usb.1] = 1 for 1983:01 [less than or equal to] t [less than or equal to] 1984:12, [VD.sub.2] = 1 for 1997:07 [less than or equal to] t [less than or equal to] 1998:12, and 0 otherwise; for Thailand [VD.sub.1] = 1 for t [greater than or equal to] 1997:07, and 0 otherwise. The 1997 Asian crisis raised exchange rate volatility in Indonesia, Korea, Malaysia, the Philippines, and Thailand. The Philippines also experienced another volatile period from 1983 through 1984.

Properties of the time-varying variance and correlation in export revenue and the exchange rate suggest the DCC bivariate GARCH(1,1)-M model specified in Equations 1-9 to investigate the net effect of exchange rate movement. We estimate the general model first. Although neither autocorrelation nor heteroskedasticity exist, insignificant coefficients make it difficult to gauge the net effect. Table 3 reports estimated coefficients and standard errors for a parsimonious par·si·mo·ni·ous  
adj.
Excessively sparing or frugal.



parsi·mo
 version with insignificant variables deleted Deleted

A security that is no longer included on a specified market. Sometimes referred to as "delisted".

Notes:
Reasons for delisting include violating regulations, failing to meet financial specifications set out by the stock exchange and going bankrupt.
. The advantages of parsimony par·si·mo·ny  
n.
1. Unusual or excessive frugality; extreme economy or stinginess.

2. Adoption of the simplest assumption in the formulation of a theory or in the interpretation of data, especially in accordance with the rule of
 include higher precision of estimates from reduced multicollinearity, increased degrees of freedom, more reliable estimates, and greater power of tests. The insignificant likelihood ratio statistic, LR(k), at the 5% level suggests no explanatory difference between the general and the parsimonious models for each country.

All estimates of autoregressive Autoregressive

Using past data to predict future data.

Notes:
Essentially it's forecasting, similar to the weather... Sometimes even the weatherman can be caught in an unexpected downpour.
 moving-average components and dummy variables in the mean Equations 1 and 2 prove significant. The parameters in the two variance Equations 4 and 5 of [DELTA][lx.sub.t] and [DELTA][lq.sub.t] exceed zero. Every country exhibits time-varying variances in either GARCH(1,1) or ARCH(1) form except Taiwan, which has a constant variance for export revenue. These findings support the use of the bivariate GARCH model for all countries. Although Taiwan experiences a constant variance of exports, the information matrix of the system is not block diagonal and joint estimation is efficient as noted by Kroner and Lastrapes (1993). The significance of [[lambda].sub.1] and [[lambda].sub.2] in Equation 5 supports the introduction of dummy variables to stabilize stabilize

See peg.
 the effect of structural breaks. Volatility persistence for [DELTA][x.sub.t] varies from 0.182 in Japan to 0.983 in Indonesia and the estimated volatility for [DELTA][lq.sub.t] varies from 0.164 in Taiwan to 0.887, in Thailand. These GARCH estimates correspond to the earlier observation that Japan and Indonesia exhibit the lowest and the highest standard deviations of [DELTA][lx.sub.t], and Taiwan and Thailand exhibit relatively low and high standard deviations of [DELTA][lq.sub.t] (see Table 2). The two variance processes converge con·verge  
v. con·verged, con·verg·ing, con·verg·es

v.intr.
1.
a. To tend toward or approach an intersecting point: lines that converge.

b.
. Joint estimates of the degrees of freedom of the t-distribution prove significant. We cannot reject the hypothesis of bivariate Student t-distributions.

Both [[theta].sub.1] and [[theta].sub.2] in the GARCH(1,1) process of [Q.sub.t] significantly exceed zero and their sum ([[theta].sub.1] + [[theta].sub.2]) falls below one, except Malaysia in which [[theta].sub.1] is insignificant. The sum ([[theta].sub.1] + [[theta].sub.2]) lies between 0.645 in the Philippines and 0.984 in Malaysia. Table 4 reports the statistics for the conditional correlation coefficients between [DELTA][lx.sub.t] and [DELTA][lq.sub.t] estimated by the DCC model. The mean value of the correlation ranges from 0.013 in Taiwan to 0.175 in the Philippines. In general, the calculated mean value falls below the correlation in Table 2. The maximum value, the minimum value, and the standard deviation indicate that the correlation coefficient varies. The correlation coefficient between [DELTA][lx.sub.t] and [DELTA][lq.sub.t] fluctuates over time, similar to the sample correlation coefficients. (3) This characteristic along with the nonzero non·ze·ro  
adj.
Not equal to zero.



nonzero  

Not equal to zero.
 estimates for [[theta].sub.1] and [[theta].sub.2] suggests the use of the time-varying correlation coefficient model for each country.

Bivariate Ljung-Box [Q.sub.2](k) statistics (Hosking 1980) for standardized residuals and squared standardized residuals of [DELTA][lx.sub.t] and [DELTA][lq.sub.t], up to six lags, do not detect remaining autocorrelation or conditional heteroskedasticity at the 5% level. The DCC bivariate GARCH-M model proves adequate for each country.

In Table 3, the estimated coefficients of U.S. manufacturing income on export revenue significantly exceeds zero, as expected, for all countries. Seven of the eight Asian countries experience contemporaneous con·tem·po·ra·ne·ous  
adj.
Originating, existing, or happening during the same period of time: the contemporaneous reigns of two monarchs. See Synonyms at contemporary.
 effects and Malaysia experiences only a one-month-lagged effect. In addition, the Philippines and Taiwan also exhibit a one-month-lagged effect and Japan, a two-month-lagged effect. Exchange rate depreciation significantly increases export revenue for all countries.

Each country experiences a one-month-lagged effect along with a contemporaneous or a two-month-lagged effect. Longer lagged effects exist for exchange rate depreciation than for foreign income, a characteristic of trade emphasized in Klaassen (2004). Exchange rate risk affects exports significantly for all countries except Korea. The estimates differ among countries. Indonesia, Malaysia, the Philippines, and Singapore show positive contemporaneous effects, but negative lagged effects. Japan, Taiwan, and Thailand show only negative lagged effects. In Korea the negative estimate proves insignificant. We keep this variable as a comparison with other countries. There is no change of our conclusions at all when we omit o·mit  
tr.v. o·mit·ted, o·mit·ting, o·mits
1. To fail to include or mention; leave out: omit a word.

2.
a. To pass over; neglect.

b.
 the risk variable in estimation.

Table 5 reports the cumulative effects of [DELTA][ly.sub.t], [DELTA][lq.sub.t], and [h.sup.1/2.sub.q,t], that is, [SIGMA][[??].sub.i], [SIGMA][[??].sub.i], and [SIGMA][[??].sub.i], respectively. The likelihood ratio (LR) statistic with [[chi].sup.2] distribution and one degree of freedom tests whether each of the cumulative effects differs from zero. U.S. income shows significant effects on exports across all countries. The effect varies from 1.521 in Korea to 3.118 in Taiwan. The foreign income effect is consistent with Klaassen's (2004) evidence that the significant estimate for foreign industrial production of monthly bilateral U.S. exports to the other G7 countries ranges from 1.19 in Italy to 4.22 in France. Foreign income effect on exports is larger than one in both developed and developing countries.

All countries exhibit significant cumulative exchange rate depreciation effects at the 5% level, except Singapore. The LR test provides a more powerful test than asymptotic t-test t-test,
n an inferential statistic used to test for differences between two means (groups) only. This statistic is used for small samples (e.g.,
N < 30). Also called
t-ratio, stu-dent's t.
 as pointed out in Kroner and Lastrapes (1993). Abeysinghe and Yeok (1998) find that exchange rate appreciation does not diminish Singapore's exports due to their high import content. Lower import prices lower the cost of export production. The depreciation effect ranges from 0.380 in Malaysia to 1.739 in Thailand. Every country exhibits a lower depreciation effect than the U.S. income effect. Klaassen (2004) reports similar evidence, where the range of the cumulative depreciation effect runs form 0.49 in Canada to 0.95 in Japan, lower than the effect of foreign income. The depreciation effect of 0.95 from the United States to Japan is close to that of 1.076 from Japan to the United States in this study.

Regarding exchange rate risk, mixed estimates emerge, making the cumulative effect less significant in some countries and more significant in others. Only Indonesia, Japan, and Taiwan possess significant negative risk effects. The evidence of the negative risk effect supports the common argument that exchange rate risk hampers international trade. That finding differs from Klaassen (2004), who finds no risk effect for bilateral U.S. exports to the other G7 countries. He argues that the exchange rate risk does not exhibit enough variability to uncover an effect on export revenue. He suggests using data on developing countries with more volatile exchange rates. Ignoring the sign and the significance, the range (-6.932, 0.227) of the exchange rate risk effect in our eight Asian countries is close to the range (-0.17, 6.44) in Klaassen's (2004) six G7 countries. The high negative risk effect in Taiwan suggests that the forward exchange rate cover proves incomplete (Fang and Thompson 2004).

4. Quantitative Analysis Quantitative Analysis

A security analysis that uses financial information derived from company annual reports and income statements to evaluate an investment decision.

Notes:
 of Depreciation and Risk

To assess the net effect, we consider the sign and significance of ([summation][[??].sub.i] [DELTA]l[q.sub.t-I] + [summation][[??].sub.i] [h.sup.1/2.sub.q,t-i]). The combined contribution of the two variables--exchange rate depreciation and its risk--depends on their estimated coefficients and the magnitudes of the variables themselves. Insignificance in·sig·nif·i·cance  
n.
The quality or state of being insignificant.

Noun 1. insignificance - the quality of having little or no significance
unimportance - the quality of not being important or worthy of note
 (significance) of the cumulative effect in Table 5 does not necessarily imply absence (existence) of contribution to the export growth. Table 6 reports the contribution shares of [DELTA]l[y.sub.t], [DELTA]l[q.sub.t], and [h.sup.1/2.sub.q,t], that is, [SIGMA][[??].sub.i] [DELTA][ly.sub.t], [SIGMA][[??].sub.i] [DELTA][lq.sub.t], and [SIGMA][[??].sub.t][h.sup.1/2.sub.t], respectively, their standard errors, and the associated p-values for significant effects.

U.S. income uniformly contributes significantly to export growth for the Asian countries. Its contribution falls within a narrow range from 0.275 in Korea to 0.561 in Taiwan. Low standard errors and p-values strongly suggest that U.S. economic activity influences Asian bilateral exports. In contrast, exchange rate depreciation exhibits weak contributions to export growth. Only Malaysia and Thailand show significant positive contributions. In Japan, the contribution is negative, although nearly zero. Athukorala and Menon (1994) argue that in the period of massive appreciation since the Plaza Accord Plaza Accord

Agreement among country representatives in 1985 to implement a coordinated program to weaken the dollar.
 in 1985, Japanese exporters maintain competitiveness in world markets by reducing their profit markup (text) markup - In computerised document preparation, a method of adding information to the text indicating the logical components of a document, or instructions for layout of the text on the page or other information which can be interpreted by some automatic system.  and by the cost-lowering effect of exchange rate appreciation due to the heavy reliance on imported inputs across all export industries. Finally, exchange rate risk significantly affects all countries. Negative exchange rate risk effects emerge in six countries and positive effects in two countries, ranging from -10.177 in Taiwan to 0.320 in Malaysia. Table 7 reports the results of the net effect tests.

The net effect, the sum of the contribution shares of exchange rate depreciation and its risk, ranges from -10.144 in Taiwan to 0.474 in the Philippines. At the 5% level, six countries exhibit sums differing significantly from zero. The evidence suggests that exchange rate movement causes a negative net effect on exports in Indonesia, Japan, Singapore, and Taiwan and a positive net effect in Malaysia and the Philippines. For the countries with a negative net effect, a significant negative effect of exchange rate risk exists whereas the exchange rate effect proves insignificant. In contrast, the two countries with the positive net effect exhibit significant positive effects of exchange rate risk with a significant or insignificant contribution of their depreciations. Korea and Thailand possess a zero sum, meaning that the net effect of exchange rate changes on export revenue equals zero. In these two countries, the Ljung-Box statistics for the series of the sum and the squared sum prove highly significant. Thus, if we omit exchange rate depreciation and its risk, the estimation of the model becomes a problem. In other words Adv. 1. in other words - otherwise stated; "in other words, we are broke"
put differently
, each variable exhibits significant effects. But the negative exchange rate risk effect offsets exactly the positive exchange rate depreciation effect.

The size of the risk estimate, risk contribution, and the net effect appear related to the standard deviation of time-varying exchange rate volatility. Table 8 summarizes relevant statistics and estimates. As can be seen, in most countries the exchange rate risk estimated by the GARCH(1,1) model is lower than the standard deviation of depreciation in Table 2, and they are close and consistent. For example, Indonesia and Singapore still have the highest and the lowest exchange rate risk measured by the GARCH process, respectively.

In Table 8, Indonesia, the Philippines, Thailand, Malaysia, and Korea display high standard deviations of conditional exchange rate variance (larger than one), ranging from 1.292 in Korea to 4.513 in Indonesia. These same countries exhibit small cumulative risk estimates from -0.253 in Thailand to 0.227 in Malaysia (less than one in absolute value), and only Indonesia's proves significant. In the Philippines and Malaysia exchange rate risk contributes to export growth, leading to positive net effects. In Thailand and Korea negative risk contribution shares are less than one, no net effect emerges. In contrast, lower standard deviations of conditional variance in Singapore, Taiwan, and Japan (less than one) associate with higher negative risk estimates, risk contributions (both are larger than one in absolute value), and therefore negative net effects. An explanation is that exporters who face volatile exchange rates hedge or aggressively manage exchange risk, resulting in a positive or a small negative risk effect. As a result, positive net effects emerge in Malaysia and the Philippines and zero net effects, in Korea and Thailand. In Japan, Singapore, and Taiwan, low volatility lulls exporters into neglecting risk and leads to a significant negative net effect. The case of Indonesia proves noteworthy. Although Indonesia experiences the highest depreciation rate among countries with a significant depreciation effect, it also exhibits the highest standard deviation of [h.sup.1/2.sub.q,t] with a significant risk effect (see Table 5). The relatively high exchange rate risk effect (see Table 6) gives Indonesia a significant negative net effect (see Table 7). In the depreciation process Indonesia obtains no benefit from depreciation, but hurts from associated exchange rate risk. This finding compares with Chou and Chao (2001), who show that in Indonesia, both the long-run and the short-run, currency depreciation produces contractionary effects, mainly due to the negative exchange rate risk effect.

5. Conclusion

This paper empirically studies the net effect of real exchange rate changes on exports. The empirical results estimated by Engle's (2002) dynamic conditional correlation bivariate GARCH-M model employ monthly bilateral exports from eight Asian countries to the United States from 1979 to 2003. They demonstrate that U.S. income generates significant and quick positive effects on Asian exports. Real exchange rate depreciation displays the normal positive estimate. The depreciation effect proves significant for all countries, except Singapore. Exports react slowly to depreciation as compared with U.S. income. Real exchange rate risk produces significant estimates on exports for seven of the eight countries studied, either negative or positive. The cumulative risk effect proves negative and significant in three countries. In contrast, Klaassen (2004) finds no significant risk effect on monthly bilateral U.S. exports to the other G7 countries.

Ignoring exchange rate risk, depreciation typically stimulates exports across Asian economies. Including the effect of time-varying risk, the net effects demonstrate less uniformity. High degrees of risk induce in·duce
v.
1. To bring about or stimulate the occurrence of something, such as labor.

2. To initiate or increase the production of an enzyme or other protein at the level of genetic transcription.

3.
 efforts to avoid its effect and, thus, exchange rate risk stimulates exports in Malaysia and the Philippines, leading to positive net effects. Depreciation alone stimulates exports, but exchange rate risk displays a negative effect for six countries, resulting in negative net effects in Indonesia, Japan, Singapore, and Taiwan and zero net effects in Korea and Thailand.

These results suggest several implications regarding the use of exchange rate depreciation to stimulate exports. In general, little guarantee exists that exchange market intervention will succeed, since exporters react differently to the exchange rate and its associated risk. Conditions vary across countries and each requires evaluation on its own merits. Exchange rate depreciation typically improves exports, but its contribution is generally small. Policy makers should carefully consider exchange market intervention, since the associated change in exchange risk may offset any positive effects of depreciation.

The evidence of negative net effects provides the rationale to reduce exchange rate fluctuations such as in Indonesia, Japan, Singapore, and Taiwan. Indonesia produces a noteworthy example. It experiences the highest depreciation rate but also the highest standard deviation, where the negative effect of exchange rate risk overcomes the positive effect of depreciation, resulting in a negative net effect. Chou and Chao (2001) show that currency depreciation leads to a contractionary effect for Indonesia due mainly to foreign exchange market volatility. A zero net effect also suggests policies to stabilize the foreign exchange market as in Korea and Thailand since depreciation does not benefit exports. A positive net effect supports the conventional view that depreciation stimulates exports, as seen in Malaysia and the Philippines, where exchange rate risk reinforces the effect of depreciation.

Received March 2005; accepted May 2005.

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New York, Middle Atlantic state of the United States. It is bordered by Vermont, Massachusetts, Connecticut, and the Atlantic Ocean (E), New Jersey and Pennsylvania (S), Lakes Erie and Ontario and the Canadian province of
: John Wiley John Wiley may refer to:
  • John Wiley & Sons, publishing company
  • John C. Wiley, American ambassador
  • John D. Wiley, Chancellor of the University of Wisconsin-Madison
  • John M. Wiley (1846–1912), U.S.
 & Sons.

Tse, Y. K., and Albert K. C. Tsui. 2002. A multivariate generalized autoregressive conditional heteroscedasticity heteroscedasticity

an irregular scattering of values in a series of distributions; accompanied by a comparable scatter of variances.
 model with time-varying correlations. Journal of Business and Economic Statistics 20:351-62.

Weliwita, Ananda Ananda

(flourished 6th century BC, India) First cousin and disciple of the Buddha. A monk who served as the Buddha's personal attendant, he became known as the “beloved disciple.” It was Ananda who persuaded the Buddha to allow women to become nuns.
, E. M. Ekanayake, and Hiroshi Tsujii. 1999. Real exchange rate volatility and Sri Lanka's exports to the developed countries, 1978-96. Journal of Economic Development 24:147-65.

Wilson, John Wilson, John, pseud. Christopher North, 1785–1854, Scottish author. Among the first contributors to Blackwood's Magazine, he joined the staff in 1817 and quickly became one of its chief critical writers.  F, and Wendy E. Takacs. 1979. Differential responses to price and exchange rate influences in the foreign trade of selected industrial countries. Review of Economics and Statistics 61:267-79.

Wilson, Peter, and Kua Choon Tat. 2001. Exchange rates and the trade balance: The case of Singapore 1970 to 1996. Journal of Asian Economics 12:47-63.

(1) Figures and more explanation appear in a longer version of this paper posted at the following address: http://www.unlv.edu/faculty/smiller/research.htm.

(2) See footnote Text that appears at the bottom of a page that adds explanation. It is often used to give credit to the source of information. When accumulated and printed at the end of a document, they are called "endnotes."  1.

(3) See footnote 1.

WenShwo Fang, Department of Economics, Feng Chia University Feng Chia University (Chinese: 逢甲大學) is a private university in Taichung, Taiwan. It was named after Feng-Chia Chiu (丘逢甲 - Qiu Fengjia), a great contributor to Taiwan in the 1950s. , 100 WenHwa Road, Taichung, 40274 Taiwan, and Department of Finance, Overseas Chinese A list of famous people with Chinese ancestry living outside of the Republic of China and the People's Republic of China. Leaders and politicians
Asia
  • Steve Chia, politician, Singapore 谢镜?
 Institute of Technology, 100 Chiao chiao  
n. pl. chiao
Variant of jiao.
 Kwang Road, Taichung, 40274 Taiwan; E-mail wsfang@fcu.edu.tw.

YiHao Lai, Graduate Institute of Business, Feng Chia University, 100 WenHwa Road, Taichung, 40274 Taiwan; E-mail yhlai@ocit.edu.tw.

Stephen M. Miller, College of Business, University of Nevada, Las Vegas “UNLV” redirects here. For other uses, see UNLV (disambiguation).
The University of Nevada, Las Vegas (UNLV) is a public, coeducational university located in Las Vegas, Nevada, USA, known for its programs in History, Engineering, Environmental Studies, Hotel
, 4505 Maryland Maryland (mâr`ələnd), one of the Middle Atlantic states of the United States. It is bounded by Delaware and the Atlantic Ocean (E), the District of Columbia (S), Virginia and West Virginia (S, W), and Pennsylvania (N).  Parkway, Las Vegas Las Vegas (läs vā`gəs), city (1990 pop. 258,295), seat of Clark co., S Nev.; inc. 1911. It is the largest city in Nevada and the center of one of the fastest-growing urban areas in the United States. , NV 89154-6005, USA; E-mail stephen.miller@ccmail.nevada.edu; corresponding author.
Table 1. U.S. Share of Total Exports

 Indonesia      Japan     Korea    Malaysia
  16.00%       30.50%     26.50%    17.60%

Philippines   Singapore   Taiwan   Thailand
  34.10%       18.70%     32.80%    18.70%

Source: The data were obtained from Direction of Trade of the
IMF, each country's exports to the United States divided by each
country's total exports.

Table 2. Preliminary Statistics for Exports and the Exchange Rate

                           Indonesia

                  [DELTA]              [DELTA]
               [lx.sub.t]           [lq.sub.t]

Sample size       291                  291
Mean                0.486                0.336
SD                 23.561                6.257
Maximum           112.428               56.678
Minimum          -120.641              -26.884
Skewness           -0.166                3.026 *
                  (0.144)               (0.144)
Kurtosis           8.475 *              32.407 *
                  (0.287)               (0.287)
J-B N            364.801 *           10929.82 *
Q(3)              70.030 *              11.934 *
Q(6)              77.207 *              29.785 *
QZ(3)             62.163 *              55.883 *
QZ(6)             62.257 *              87.651 *
ADF (m)          -21.005 *(1)          -14.494 *(0)
[[rho].sub.xq]               0.213

                           Philippines

                    [DELTA]             [DELTA]
                 [lx.sub.t]          [lq.sub.t]

Sample size        291                 291
Mean                 0.622               0.186
SD                   9.528               2.702
Maximum             35.601              21.006
Minimum            -38.113              -8.687
Skewness            -0.050               2.577 *
                    (0.144)             (0.144)

Kurtosis             5.418 *            20.495 *
                    (0.287)             (0.287)
J-B N               71.019 *          4033.18 *
Q(3)                64.406 *             8.400 *
Q(6)                66.996 *             9.516
[Q.sup.2](3)        31.870 *             6.203 **
[Q.sup.2](6)        35.351 *             8.823
ADF(m)             -18.787 *(1)        -14.335 *(0)
[[rho.sub.xq]                  0.259

                               Japan

                   [DELTA]             [DELTA]
                [lx.sub.t]          [lq.sub.t]

Sample size       291                  291
Mean                0.218                0.020
SD                  5.263                2.792
Maximum            15.506                6.801
Minimum           -18.577              -10.068
Skewness           -0.035               -0.609 *
                   (0.144)              (0.144)
Kurtosis            3.787 *              3.757 *
                   (0.287)              (0.287)
J-B N               7.573 *             24.945 *
Q(3)               52.199 *             27.323 *
Q(6)               66.728 *             28.284 *
QZ(3)              14.311 *              8.800 *
QZ(6)              16.013 *             17.596 *
ADF (m)            -9.673 *(2)         -12.641 *(0)
[[rho].sub.xq]                0.206

                              Singapore

                   [DELTA]             [DELTA]
                [lx.sub.t]          [lq.sub.t]

Sample size       291                  291
Mean                0.487                0.095
SD                 12.145                1.411
Maximum            55.490                6.380
Minimum           -54.574               -4.995
Skewness           -0.218                0.069
                   (0.144)              (0.144)

Kurtosis
                    6.618 *              4.950 *
J-B N              (0.287)              (0.287)
Q(3)              160.985 *             46.330 *
Q(6)              100.780 *             17.620 *
[Q.sup.2](3)      101.580 *             20.500 *
[Q.sup.2](6)       59.289 *             48.710 *
ADF(m)             59.721 *             86.074 *
[[rho.sub.xq]     -19.291 *(1)         -13.543 *(0)
                              0.046

                             Korea

                  [DELTA]              [DELTA]
               [lx.sub.t]           [lq.sub.t]

Sample size       291                  291
Mean                0.542                0.123
SD                 10.886                2.785
Maximum            41.158               34.325
Minimum           -42.280               -8.509
Skewness           -0.186                6.678 *
                   (0.144)              (0.144)
Kurtosis            5.013 *             82.118 *
                   (0.287)              (0.287)
J-B N              50.807 *          78061.06 *
Q(3)               70.169 *             59.985 *
Q(6)               90.065 *             64.426 *
QZ(3)              44.415 *             13.136 *
QZ(6)              47.158 *             13.622 *
ADF (m)            19.635 *(1)         -12.047 *(1)
[[rho].sub.xq]                0.215

                              Taiwan

                   [DELTA]             [DELTA]
                [lx.sub.t]          [lq.sub.t]

Sample size       291                  291
Mean                0.283                0.053
SD                  8.956                1.560
Maximum            37.592                9.020
Minimum           -25.208               -6.546
Skewness            0.407 *              0.109
                   (0.144)              (0.144)

Kurtosis            4.645 *              7.954 *
                   (0.287)              (0.287)
J-B N              40.824 *            298.168 *
Q(3)               89.918 *             14.133 *
Q(6)               90.098 *             22.365 *
[Q.sup.2](3)       36.352 *              3.324
[Q.sup.2](6)       39.742 *              6.538
ADF(m)            -20.683 *(1)         -13.980 *(0)
[[rho.sub.xq]                 0.018

                            Malaysia

                  [DELTA]              [DELTA]
               [lx.sub.t]           [lq.sub.t]

Sample size       291                  291
Mean                0.617                0.254
SD                  9.815                2.085
Maximum            36.894               14.890
Minimum           -32.974              -15.417
Skewness            0.049                0.348 *
                   (0.144)              (0.144)
Kurtosis            4.118 *             26.085 *
                   (0.287)              (0.287)
J-B N              15.278 *           6467.65 *
Q(3)               68.233 *             13.182 *
Q(6)               70.957 *             14.315 *
QZ(3)              19.944 *            139.630 *
QZ(6)              26.883 *            188.000 *
ADF (m)          -18.864 *(1)          -13.875 *(0)
[[rho].sub.xq]               0.081

                              Thailand

                  [DELTA]              [DELTA]
               [lx.sub.t]           [lq.sub.t]

Sample size       291                  291
Mean                1.031                0.196
SD                 11.542                2.609
Maximum            49.175               16.295
Minimum           -43.237              -15.911
Skewness           -0.144                1.872 *
                   (0.144)              (0.144)

Kurtosis            6.404 *             24.106 *
                   (0.287)              (0.287)
J-B N             141.504 *           5570.93 *
Q(3)               38.784 *             23.865 *
Q(6)               58.018 *             28.645 *
[Q.sup.2](3)       53.417 *            129.850 *
[Q.sup.2](6)      109.77 *             187.150 *
ADF(m)            -14.982 *(1)         -12.766 *(0)
[[rho.sub.xq]                 0.110

SD represents the standard deviation; J-B N denotes the Jacque-Bera
normality test; Q(k) and [Q.sup.2](k) equal Ljung-Box statistics for
the level and squared terms for autocorrelations up to k lags;
ADF(m) equals the augmented Dickey-Fuller unit root test with
lags m selected by the AIC; [[rho.sub.xq] equals the unconditional
correlation coefficent between [DELTA][lx.sub.t] and
[DELTA}[lq.sub.t].

* Denotes 5% significance level.

** Denotes 10% significance level.

Table 3. Estimates for Dynamic Conditional Correlation Bivariate
GARCH-M, Equations 1-9

                       Indonesia              Japan

                  Coef.       SE           Coef.    SE

[a.sub.0]         1.691 *    0.42       3.937 *    0.24
[a.sub.1]        -0.643 *    0.05      -0.570 *    0.04
[a.sub.2]        -0.353 *    0.05      -0.272 *    0.04
[b.sub.0]         2.865 *    0.67       1.212 *    0.35
[b.sub.1]
[b.sub.2]                               1.066 *    0.34
[c.sub.0]                               0.298 *    0.08
[c.sub.1]         0.280 *    0.07       0.453 *    0.08
[c.sub.2]         0.148 **   0.08       0.325 *    0.08
[d.sub.0]         0.421 *    0.08
[d.sub.1]        -0.653 *    0.09      -1.476 *    0.08
[d.sub.2]
[s.sub.0]         0.072      0.06       0.174      0.19
[s.sub.1]         0.202 *    0.07       0.310 *    0.06
[gamma.sub.1]    30.258 *    1.48
[gamma.sub.2]    16.037 *    0.60
[alpha.sub.0]     1.839 *    0.70      13.528 *    1.89
[alpha.sub.1]     0.096 *    0.02       0.182 **   0.10
[alpha.sub.2]     0.887 *    0.01
[beta.sub.0]      0.251 *    0.04       6.164 *    0.48
[beta.sub.1]      0.489 *    0.09       0.172 *    0.06
[beta.sub.2]      0.299 *    0.05
[lambda.sub.1]   10.869 *    4.02
[lambda.sub.2]
v                 5.691 *    0.93       7.131 *    1.86
[theta.sub.1]     0.160 **   0.08       0.057 **   0.03
[theta.sub.2]     0.592 *    0.20       0.730 *    0.07
[Q.sub.2](6)         32.658                20.294
[Q.sub.2](6)         13.299                20.950
LR(k)               4.788 (4)             3.414 (5)

                        Korea                Malaysia

                     Coef.    SE           Coef.    SE

[a.sub.0]         0.761 **   0.43       0.442      0.41
[a.sub.1]        -0.577 *    0.05      -0.625 *    0.05
[a.sub.2]        -0.277 *    0.04      -0.250 *    0.05
[b.sub.0]         1.521 *    0.65
[b.sub.1]                               1.828 *    0.60
[b.sub.2]
[c.sub.0]         0.562 *    0.12
[c.sub.1]         0.924 *    0.20       0.380 *    0.19
[c.sub.2]
[d.sub.0]        -0.088      0.23       1.189 *    0.19
[d.sub.1]
[d.sub.2]                              -0.962 *    0.20
[s.sub.0]         0.033      0.07       0.117 **   0.06
[s.sub.1]         0.351 *    0.06       0.183 *    0.07
[gamma.sub.1]
[gamma.sub.2]
[alpha.sub.0]    40.966 *    6.76       5.722 *    1.28
[alpha.sub.1]     0.363 *    0.12       0.139 *    0.03
[alpha.sub.2]     0.282 *    0.08       0.797 *    0.02
[beta.sub.0]      0.118 *    0.02       0.796 *    0.10
[beta.sub.1]      0.101 *    0.03       0.357 *    0.10
[beta.sub.2]      0.761 *    0.02
[lambda.sub.1]    0.799 *    0.31      34.865 *   15.38
[lambda.sub.2]
v                 4.143 *    0.46       5.069 *    0.80
[theta.sub.1]     0.099 *    0.03       0.011      0.02
[theta.sub.2]     0.828 *    0.01       0.984 *    0.04
[Q.sub.2](6)         30.200                28.275
[Q.sub.2](6)         14.066                10.643
LR(k)               5.621 (5)             7.844 (6)

                     Philippines            Singapore

                    Coef.    SE           Coef.    SE

[a.sub.0]         0.128      0.31       3.366 *    0.10
[a.sub.1]        -0.617 *    0.04      -0.684 *    0.05
[a.sub.2]        -0.230 *    0.04      -0.257 *    0.04
[b.sub.0]         1.176 *    0.47       2.618 *    0.57
[b.sub.1]         1.550 *    0.42
[b.sub.2]
[c.sub.0]         0.936 *    0.11
[c.sub.1]         0.395 *    0.13       0.419 **   0.22
[c.sub.2]
[d.sub.0]         0.664 *    0.12       1.579 *    0.07
[d.sub.1]         0.741 *    0.12
[d.sub.2]        -1.308 *    0.12      -3.804 *    0.08
[s.sub.0]         0.004      0.09       0.037      0.09
[s.sub.1]         0.356 *    0.06       0.236 *    0.05
[gamma.sub.1]
[gamma.sub.2]
[alpha.sub.0]     8.397 *    1.82       4.106 *    0.05
[alpha.sub.1]     0.240 *    0.05       0.173 *    0.01
[alpha.sub.2]     0.725 *    0.03       0.793 *    0.01
[beta.sub.0]      0.713 *    0.15       0.309 *    0.02
[beta.sub.1]      0.333 *    0.07       0.099 *    0.02
[beta.sub.2]      0.401 *    0.06       0.732 *    0.02
[lambda.sub.1]   16.632 *    5.16
[lambda.sub.2]   18.962 **   11.58
v                 3.023 *    0.17       7.174 *    0.58
[theta.sub.1]     0.204 **   0.11       0.061 **   0.03
[theta.sub.2]     0.441 *    0.12       0.649 *    0.16
[Q.sub.2](6)         36.108                 8.848
[Q.sub.2](6)         15.949                20.672
LR(k)               1.962 (2)             3.606 (5)

                        Taiwan             Thailand

                    Coef.     SE           Coef.    SE

[a.sub.0]        10.165 *    0.24       1.314 *    0.37
[a.sub.1]        -0.736 *    0.07      -0.645 *    0.05
[a.sub.2]        -0.324 *    0.05      -0.321 *    0.05
[b.sub.0]         1.539 *    0.55       2.446 *    0.57
[b.sub.1]         1.579 *    0.52
[b.sub.2]
[c.sub.0]                               0.474 *    0.13
[c.sub.1]         0.590 *    0.26       0.780 *    0.17
[c.sub.2]                               0.485 *    0.13
[d.sub.0]
[d.sub.1]        -1.959 *    0.10      -0.253 *    0.12
[d.sub.2]        -4.973 *    0.10
[s.sub.0]         0.106      0.09      -0.042      0.06
[s.sub.1]         0.218 *    0.06       0.212 *    0.06
[gamma.sub.1]                           6.065 *    1.21
[gamma.sub.2]                          15.069 *    1.20
[alpha.sub.0]    44.521 *    5.12       1.559 *    0.48
[alpha.sub.1]     0.092      0.07       0.082 *    0.01
[alpha.sub.2]                           0.890 *    0.01
[beta.sub.0]      1.823 *    0.08       0.083 *    0.02
[beta.sub.1]      0.164 *    0.03       0.100 *    0.02
[beta.sub.2]                            0.787 *    0.02
[lambda.sub.1]                         10.868 *    3.66
[lambda.sub.2]
v                 5.164 *    0.95       6.105 *    1.26
[theta.sub.1]     0.049 *    0.02       0.050 **   0.03
[theta.sub.2]     0.859 *    0.12       0.815 *    0.04
[Q.sub.2](6)         28.183                36.001
[Q.sub.2](6)         16.552                23.231
LR(k)               2.874 (6)             5.858 (4)

Coef. And SE equal to coefficients and their standard errors.
[Q.sub.2](6) and [Q.sup.2.sub.2](6) equal the bivariate Ljung-Box
statistics (Hosking 1980) of the standardized and squared
standardized residuals for autocorrelations up to six lags. LR(k)
equals likelihood ration statistics following a [chi square]
distribution with the degree of freedom k (in parentheses) that
tests whether the restricted simple model exhibits the same
explanatory power as the unrestricted general model, eliminating k
insignificant estimates.

* Denotes 5% significance level.

** Denotes 10% significance level.

Table 4. Statistics for Dynamic Conditional Correlations

                      Indonesia      Japan     Korea    Malaysia

Mean                       0.154       0.172    0.068      0.017
Median                     0.147       0.176    0.088      0.014
Maximum                    0.775       0.645    0.406      0.094
Minimum                   -0.448      -0.063   -0.431     -0.058
Standard deviation         0.011       0.005    0.008      0.002

                     Philippines   Singapore   Taiwan   Thailand

Mean                       0.175       0.040    0.013      0.066
Median                     0.187       0.053   -0.004      0.065
Maximum                    0.817       0.225    0.308      0.656
Minimum                   -0.349      -0.191   -0.203     -0.203
Standard deviation         0.007       0.004    0.006      0.005

Table 5. Cumulative Effects of [DELTA][ly.sub.t], [DELTA][lq.sub.t],
and [h.sup.1/2.sub.t]

                       Indonesia        Japan       Korea

[SIGMA] [??]            2.865 *       2.278 *     1.521 *
LR                     12.548        28.683       4.048
                       (0.000)       (0.000)     (0.044)
[SIGMA] [??]            0.428 *       1.076 *     1.486 *
LR                     18.578        57.978      26.087
                       (0.000)       (0.000)     (0.000)
[SIGMA] [??]           -0.232 *      -1.476 **   -0.088
LR                      4.624         3.273       0.082
                       (0.032)       (0.070)     (0.775)

                       Malaysia    Philippines   Singapore

[SIGMA] [??]            1.828 *       2.725 *     2.618 *
LR                      6.836        12.058      10.96
                       (0.009)       (0.001)     (0.001)
[SIGMA] [??]            0.380 **      1.331 *     0.419
LR                      2.973        35.368       2.125
                       (0.085)       (0.000)     (0.145)
[SIGMA] [??]            0.227         0.097      -2.226
LR                      0.642         0.263       1.968
                       (0.423)       (0.608)     (0.161)

                         Taiwan      Thailand

[SIGMA] [??]            3.118 *       2.446 *
LR                     18.534        10.815
                       (0.000)       (0.001)
[SIGMA] [??]            0.590 *       1.739 *
LR                      5.509        45.657
                       (0.019)       (0.000)
[SIGMA] [??]           -6.932 *      -0.253
LR                      6.889         2.478
                       (0.009)       (0.115)

LR is the likelihood ratio statistic, following a [chi square]
distribution with one degree of freedom that tests [[SIGMA].sub.bi]= 0,
[[SIGMA].sub.ci]= 0, and [[SIGMA].sub.di] = 0;
p-values are in parentheses.

* Denotes 5% significance level.

** Denotes 10% significance level.

Table 6. Contribution of [DELTA][ly.sub.t], [DELTA][lq.sub.t],
and [h.sub.t.sup.1/2] to the Net Effect

                      Indonesia     Japan       Korea       Malaysia

[SIGMA] [??][DELTA][ly.sub.t]

  Mean                0.511 *       0.410 *     0.275 *     0.328 *
  Standard error      0.109         0.070       0.058       0.069
  p-value            (0.000)       (0.000)     (0.000)     (0.000)

[SIGMA] [??][DELTA][lq.sub.t]

  Mean                0.156        -0.001       0.205       0.097 *
  Standard error      0.125         0.124       0.209       0.047
  p-value            (0.213)       (0.992)     (0.327)     -0.040)

[SIGMA] [??][h.sub.t.sup.1/2]

  Mean                -0.628 *     -3.986 *    -0.133 *     0.320 *
  Standard error       0.087        0.028       0.007       0.063
  p-value             (0.000)      (0.000)     (0.000)      0.000)

                      Philippines   Singapore   Taiwan      Thailand

[SIGMA] [??][DELTA][ly.sub.t]

  Mean                 0.490 *      0.473 *     0.561 *     0.442 *
  Standard error       0.084        0.099       0.095       0.092
  p-value             (0.000)      (0.000)     (0.000)     (0.000)

[SIGMA] [??][DELTA][lq.sub.t]

  Mean                 0.260        0.034       0.032       0.343 **
  Standard error       0.171        0.035       0.055       0.188
  p-value             (0.130)      (0.333)     (0.557)     (0.069)

[SIGMA] [??][h.sub.t.sup.1/2]

  Mean                 0.214 *     -2.990 *    -10.177 *   -0.392 *
  Standard error       0.077        0.038       0.076       0.029
  p-value             (0.005)      (0.000)     (0.000)     (0.000)

See Table 5.

* Denotes 5% level of significance.

Table 7. The Net Effect of Exchange Rate Changes

                  Indonesia      Japan       Korea     Malaysia

Mean              -0.472 *     -3.987 *      0.072     0.417 *
Standard error     0.159        0.134        0.208     0.084
p-value           (0.003)      (0.000)      (0.728)   (0.000)

                 Philippines   Singapore    Taiwan     Thailand

Mean               0.474 *     -2.956 *    -10.144 *    -0.050
Standard error     0.192        0.048        0.092       0.189
p-value           (0.014)      (0.000)      (0.000)     (0.793)

See Table 6. The net effect equals [SIGMA] [[??].sub.i]
[DELTA][lq.sub.t-i] + [SIGMA][[??].sub.i] [h.sup.1/2.sub.q,t-i].

* Denotes 5% level of significance.

Table 8. Standard Deviation of Exchange Rate Risk and Net Effects

                      Indonesia   Philippines   Thailand    Malaysia

SE of exchange rate
  depreciation          6.257        2.702        2.609       2.085
Exchange rate risk      5.256        3.093        2.492       2.117
(SE)                   (4.513)      (2.075)      (1.957)     (1.549)
Risk effect            -0.232 *      0.097       -0.253       0.227
Risk contribution      -0.628 *      0.214 *     -0.392 *     0.320 *
Net effect             -0.472 *      0.474 *     -0.050       0.417 *

                        Korea        Japan       Taiwan     Singapore

SE of exchange rate
  depreciation          2.785        2.792        1.560       1.441
Exchange rate risk      1.980        2.719        1.486       1.361
(SE)                   (1.292)      (0.327)      (0.236)     (0.229)
Risk effect            -0.088       -1.476 **    -6.932 *    -2.226
Risk contribution      -0.133 *     -3.986 *    -10.177 *    -2.990 *
Net effect              0.072       -3.987 *    -10.144 *    -2.956 *

SE equals the standard error.

* Denotes 5% significance level.

** Denotes 10% significance level.
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Author:Miller, Stephen M.
Publication:Southern Economic Journal
Date:Jan 1, 2006
Words:9896
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