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KIEP Working Paper 16-08 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants: Market Average Rate Regime vs Free Floating CHOI Bo-Young and PYUN Ju Hyun The Korea Institute for International Economic Policy (KIEP) was founded in 1990 as a government-funded economic research institute. It is a leading institute concerning the international economy and its relationship with Korea. KIEP advises the government on all major international economic policy issues and serves as a warehouse of information on Korea’s international economic policies. Further, KIEP carries out research by request from outside institutions and organizations on all areas of the Korean and international economies by request. KIEP possesses highly knowledgeable economic research staff. Our staff includes many research fellows with PhDs in economics from international graduate programs, supported by dozens of professional researchers. Our efforts are augmented by our affiliates, the Korea Economic Institute of America (KEI) in Washington, D.C. and the KIEP Beijing office, which provide crucial and timely information on local economies. KIEP has been designated by the government as its Center for International Development Cooperation and the National APEC Study Center. KIEP also maintains a wide network of prominent local and international economists and business people who contribute their expertise on individual projects. KIEP continually strives to increase its coverage and grasp of world economic events, and expanding cooperative relations has been an important part of these efforts. In addition to many joint projects in progress KIEP is aiming to become a part of a broad but close network of the world’s leading research institutes. Considering the rapidly changing economic landscape of Asia, which is leading to further integration of the world’s economies, we are confident that KIEP’s win-win proposal for greater cooperation and sharing of resources and facilities will increasingly become standard practice in the field of economic research. HYUN Jung Taik President Korea Institute for International Economic Policy 370 Sicheong-daero, Sejong-si, 30147, Korea Tel: (8244) 414-1251 Fax: (8244) 414-1144 www.kiep.go.kr Price USD 3 Working Paper 16-08 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants: Market Average Rate Regime vs Free Floating CHOI Bo-Young and PYUN Ju Hyun Executive Summary This study examines how exchange rate volatility can influence total factor productivity (TFP) in various dimensions. Using Korean manufacturing plant-level data for 1990-2007, we first compare and contrast the effects of exchange rate volatility on TFPs between two different exchange rate regimes―pegged and free floating. We find that the exchange rate volatility had a negative effect on productivity in both regimes but this negative effect was greater during the period when exchange rate fluctuation was restricted, compared to the period with free floating rate. We also find that the negative effects of the volatility on productivity were heterogeneous over TFP quantiles and exhibited an inverted W-shape curve. In particular, the negative effects were more pronounced for exporting plants that had the lowest or highest TFPs. Keywords: Total factor productivity, Korean plant-level data, Exchange rate volatility, Quantile regression JEL Classification: F12, F14 Executive Summary 3 Contributors CHOI Bo-Young Research Fellow at the Korea Institute for International Economic Policy. She holds a Ph.D. degree in Economics from the University of CaliforniaDavis. Her fields of research are international trade and industrial organization. Her publication includes “Globalization, Ownership and the Effects of Trade Liberalization in Chinese Import Prices” with Deborah Swenson, AsiaPacific Journal of Accounting and Economics (2015), “The Impact of Regulatory Measures of CJK on International Trade” The Journal of Northeast Asian Economic Studies (2016) and others. PYUN Ju Hyun Assistant Professor of International Business at Korea University Business School (KUBS). He serves as an adjunct research fellow at Asiatic Research Institute (ARI), Korea University. Prior to joining Korea University, he worked as a research fellow at Korea Institute for International Economic Policy (KIEP). He received his Ph.D. in Economics from the University of California, Davis. 4 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants Contents Executive Summary ....................................................................................... 3 1. Introduction ............................................................................................... 7 2. Theoretical Background .......................................................................... 13 3. Data and Methodology ................................................................................ 18 3-1. Data and TFP Estimation ................................................................... 18 3-2. Methodology: Quantile Regression................................................... 21 4. Empirical Results .................................................................................... 23 4-1. Main Results ..................................................................................... 23 4-2. Shape of Quantile Regression Curves: Exporters vs. Non-exporters .... 27 4-3. Robustness: Alternative Volatility Measure ...................................... 28 4-4. Exchange Rate Volatility with Adjacent Major Trading Partners: China vs. Japan ................................................................................. 28 5. Discussion and Conclusion ...................................................................... 35 References ................................................................................................ 37 Appendix. Production Function Estimation Results ..................................... 40 Contents 5 7 Tables Table 1. Summary Statistics ................................................................................. 20 Table 2. Main Results: Sub-sample with Different Exchange Rate Regime, 1990-1997 vs 1999-2007 .......................................................................... 25 Table 3. Additional Results: Never-exporters vs. Exporters .................................. 29 Panel A. Market average rate regime ( a la pegged regime) (1990-1997) .. 29 Panel B. Free floating (1999-2007)........................................................... 30 Table 4. Robustness with Real Exchange Rate Volatility, 1990-1997 vs 1999-2007 31 Table 5. Exchange Rate Volatility of China-Korea vs that of Japan-Korea .............. 33 Table A1. Estimates of Production Functions for 18 Manufacturing Industries ....... 40 Figures Figure 1. Korean Exchange Rate and Its Volatility, 1990-2007 ................................. 8 Figure 2. Productivity Distribution: Exporter vs Non-exporter................................ 16 Figure 3. Theoretical Paradigm for an Inverted W-shape Volatility Effect Based on Melitz Model (Helpman, 2006)................................................ 17 Figure 4. Quantile Regression Results .................................................................. 24 6 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants: Market Average Rate Regime vs Free Floating CHOI Bo-Young and PYUN Ju Hyun 1. Introduction This study investigates the effects of exchange rate volatility on total factor productivity (TFP) using plant-level data of Korean manufacturing industries during 1990-2007. In particular, we shed light on the exchange rate regime change in Korea from pegged to free floating, and examine how this regime shift influenced the exchange rate volatility effect on plant productivity. Our study also utilizes the information on plant-level productivity distribution with a quantile regression approach (Koenker and Hallock 2001). By keeping track of productivity distribution in response to exchange rate fluctuation, we discuss how differently the exchange rate volatility shapes plant productivity over productivity quantiles. We thank Yong Joon Jang and Kyunghun Kim for their helpful comments and suggestions. We also gratefully acknowledge the financial support from KIEP. All remaining errors are our own. Department of Northeast Asian Economies, Korea Institute for International Economic Policy, 370 Sicheongdaero, Sejong 339-007, Korea; Tel: 82-44-414-1185, Email: [email protected]. Corresponding author: Business School, Korea University, 145 Anam-Ro, Seongbuk-Gu, Seoul 136-701, Korea; Tel: 82-2-3290-2610, Email: [email protected]. 1. Introduction 7 Figure 1. Korean Exchange Rate and Its Volatility, 1990-2007 In Figure 1, we plot the Korean real exchange rate (RER) movements for the period 1990-2007, which are obtained from OECD and BIS. Before 1997, the real exchange rate had been quite constant and its variation had been restricted in some range. However, the RERs plummeted about 25 percent in 1998 and started to fluctuate. During 1990-1997, the Korean government implemented the “market average rate” system. Under this system, the basic exchange rate of the Korean won against the US dollar was determined in the market within a specified range around the weighted average interbank rates of the previous day.1 The range of allowed daily fluctuations was also limited (mostly 0.4~2.25 percent for whole sample period), but it steadily widened up to within 10 percent in 1997.2 However, 1 2 An important feature of this system is that it allowed market forces to play a part in determining exchange rates, thereby laying a basis for the market to become more efficient and moving toward a free-floating regime in the future. See Nam and Kim (1999) for more detailed discussion. Exchange rate had been more stable in the 1990s under the market average rate system 8 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants this market average rate was replaced by free floating in December 1997. Figure 1 also depicts an annual standard deviation of daily Korean nominal exchange rate against the US dollar and contrasts it between two periods, before and after 1997. As expected, the exchange rate volatility had been trivial until 1997. However, during the Asian Financial crisis period (1997-1998), the exchange rate volatility surged. In addition, as the Korean exchange rate regime was changed from market average rate to free floating in 1997, the exchange rate fluctuation has increased afterward. Given the change in the exchange rate regime and the increased exchange rate volatility, this paper empirically investigates whether such change affected the effect of exchange rate volatility on productivity. Since not only an exchange rate change but also its volatility can greatly affect a firm’s decision making―investment, employment, profitability, and/or productivity,3 it is important to understand the effect of “external” exchange rate shock on firm productivity and the channels through which exchange rate fluctuation shock is distributed. In particular, this issue is even more critical for Korea, as it is a small open economy and often vulnerable to external shocks. We find that exchange rate volatility was negatively associated with plant productivity, which confirms previous studies such as by Caglayan and Demir (2014). By comparing and contrasting the two exchange rate regimes, we find that the negative effect of the volatility on productivity was greater over all TFP quantiles during the period when exchange rate variation was restricted before 1997, compared to the period with the free 3 than in the 1980s. At the very beginning, the limit of fluctuation was set at 0.4 percent of the weighted average of the interbank rates of the previous day in either direction, but it was expanded to 2.25 percent in December 1995 and to 10 percent in November 1997. Demir (2013) argue that exchange rate uncertainty is expected to have more depressing growth effects in developing countries such as Turkey because of i) low levels of financial market development and the lack of hedging instruments; ii) the presence of original sin and dollarization with strong balance sheet effects; iii) higher levels of openness, and the invoicing of exports in hard currencies; and iv) higher levels of capital flow, and growth volatility. 1. Introduction 9 floating exchange rate regime after 1997. We also show that the volatility that stemmed from the cross exchange rate between Korea and China had a greater negative effect than that between Korea and Japan. In addition, we find that the negative effects of exchange rate volatility on productivity were heterogeneous over TFP quantiles and exhibited an inverted W-shape curve. First, the negative effect was greater for not only the least productive plants but also the most productive plants. Furthermore, around the medium productivity range, this negative effect was magnified again. We show that these double arches may be driven by two important attributes―productivity and exposure to the volatility shocks. While more productive firms are less vulnerable to the exchange rate volatility shock, the productive firms that tend to have a higher exposure to foreign market are more sensitive to the shock. Our finding is confirmed by the distinction between exporters and non-exporters. The stronger negative effect in the highest TFP quantiles could be driven by exporting firms with the uppermost exposure to the volatility shock owing to a large export share. In addition, the greater negative effect of the volatility in medium TFP quantiles could be because of the least productive exporting firms. Previous studies such as Fung et al. (2011), Ekholm et al. (2012), and Choi and Pyun (2016) examine the effect of (real) exchange rate change on firm productivity. These studies recognize various channels that a change in the “level” of RER affects productivity―scale effect and selection (competition) effect.4 Thus, the exchange rate effects on productivity are heterogeneous, depending on whether the scale effect or the selection effect dominates. However, only a few studies examine the second moment 4 Scale effect indicates the reduction of average costs resulting from the expansion of firm production that serves as an additional source of efficiency gains. Exchange rate depreciation (appreciation) can result in expansion (reduction) of output, which lead to an increase (decrease) in efficiency. Selection effect indicates that a firm’s survival from intense competition increases efficiency. Exchange rate appreciation can result in competitive environment for firm which can increase firm’s efficiency through restructuring or resource reallocation. 10 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants of exchange rate, “exchange rate volatility,” in determining firm/plant-level productivity even though uncertain economic environment is detrimental for a firm’s managerial decision making. Our work is closely related to previous studies on (exchange rate) volatility and firm growth. Chong and Gradstein (2009) find the adverse effect of firms’ perceived volatility on its sales growth using the World Business Environment Survey data for enterprises in 80 countries and find that weak institutions amplify the negative growth effect of volatility. However, their volatility measure5 captures the broad economic and financial volatility embedded in economy, not limited to exchange rate. Caglayan and Demir (2014) and Demir (2013), using Turkish firm-level data, find negative effects of exchange rate volatility on firm output and employment growth. Caglayan and Demir (2014) show that while output per worker (labor productivity) is positively related to its credit market access in Turkey, the negative effects of exchange rate volatility on labor productivity growth turn out not to differ substantially depending on accessibility to financial markets. However, Demir (2013) shows that having access to foreign capital is found to overcome the negative effect of exchange rate volatility on employment growth. Nonetheless, our work is distinguished from these works in that we compare and contrast the marginal effect of exchange rate volatility between the two different exchange rate regimes—pegged and free floating. As the market belief on exchange rate volatility between the two regimes could be different, individual firms respond to the same volatility shock differently according to the regime. Another contribution of this study is that using the estimated TFP (Levinshon and Petrin 2003) to which many firm-level studies focus, we try to investigate the heterogeneous effects of exchange rate volatility on individual plant TFPs with respect to different 5 Their measure is constructed by questionnaires in the survey data, which includes policy unpredictability and political instability 1. Introduction 11 TFP levels. Our quantile regression shows a common shock of exchange rate fluctuation that is distributed to firms/plants differently in terms of their productivity levels. The remainder of the paper is organized as follows. Section 2 provides the theoretical background on how the exchange rate volatility affects the firm/plant productivity. Section 3 describes our data and empirical research design. Section 4 presents the empirical results and robustness checks, and Section 5 concludes. 12 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants 2. Theoretical Background Previous studies explicitly show that the exchange rate volatility has a negative effect on investment, employment, and growth (Aghion et al. 2009; Aizenman and Marion 1999; Chong and Gradstein 2009; Serven 2003). Some studies also provide channels through which the exchange rate volatility works its effects, particularly for exporting or multinational firms. The exchange rate volatility affects the future cash flow and profit expectation of firms operating in foreign markets, leading to changes in their entry and expansion decisions. According to option-pricing models of Campa (1993), an increase in the exchange rate volatility hampers firms’ foreign investment and subsequently their growth, as they delay their entry or expansion decisions to foreign market. Aizenman (2003) theoretically shows that the macroeconomic volatility in emerging markets decreases foreign firms’ employment as they switch production to less volatile markets.6 Note that Caglayan and Demir (2014), however, do not find any empirical distinction in labor productivity changes between foreign and domestic firms in response to exchange rate volatility. Aghion et al. (2009) theoretically link exchange rate volatility with productivity growth from a macroeconomic perspective. They show that exchange rate volatility leads to fluctuations in a firm’s profit because its revenue fluctuates along with the exchange rate but its cost is fixed under input (wage) price stickiness in the model. This increase in volatility in profits in turn lowers investments in innovation, which reduces productivity growth. However, investments in innovation also depend on liquidity provided from a well-developed financial market. Thus, an increase in volatility decreases aggregate productivity growth, particularly in countries where the financial market is under-developed (Aghion et al. 2009). 6 Conversely, exchange rate uncertainty may increase foreign firms’ entry and growth as risk-averse firms substitute foreign production for exports (Cushman 1985; Goldberg and Kolstad 1995). 2. Theoretical Background 13 Based on previous theoretical works on volatility and productivity, we can infer that the growth effects of exchange rate volatility would depend on firm and country characteristics. For instance, the negative shock of exchange rate volatility on productivity is more pronounced for exporting firms than domestic firms in that the exchange rate fluctuation does not directly affect domestic firms’ profit or investment decision. Moreover, owing to the presence of financing constraints, firms and countries that have greater access to domestic and/or foreign capital markets can deal with unexpected exchange rate shocks better than others do (Aghion et al. 2009; Demir 2013). Similarly, the level of import dependence, firm size, and profitability also determine the nature of firm response to exchange rate shocks (Klein et al., 2003). While a few studies have examined the role of firm’s productivity itself in determining the exchange rate volatility effect on productivity, no study has focused on the role of exchange rate regime in determining the relationship between exchange rate volatility and productivity. First, we discuss the effect of a government choice of exchange rate regime on firm’s sensitivity to exchange rate volatility. One may argue that exchange rate volatility and its effect would be more amplified in the free floating regime compared to “pure” fixed exchange rate regime because there is no exchange rate fluctuation at all under the fixed regime. However, the pure fixed exchange rate regime is often modified by allowing a possible range of exchange rate fluctuation in a practical sense (i.e., a hybrid regime of fixed and floating, managed float, and/or pegs with a band). Suppose if there is a same degree of exchange rate volatility shock in two different exchange rate regimes between a hybrid of fixed and floating regime and free floating. Then, the volatility in the hybrid regime can be a more serious concern for firms because firms in this regime recognize that the exchange rate fluctuation is limited in the market and neglect to respond to exchange rate fluctuation shock that is small. However, under 14 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants free floating, firms would voluntarily prepare hedging tools in response to exchange rate fluctuation because they cannot expect a possible range of the fluctuation. For instance, while a 2.25 percent change in exchange rate under the market average rate regime in Korea represents the maximum change, the same 2.25 percent change of fluctuation in the free floating would not be considered as a serious fluctuation. In this regard, the marginal effect of the same degree of exchange rate fluctuation will exert a different influence on firms according to the regime they are in. Furthermore, this study focuses on the individual (plant) productivity level, and how it shapes the relationship between exchange rate volatility and productivity. While it is evident that the exchange rate volatility shock mainly affects firms operating in foreign market (i.e., exporting firms), it could have an indirect effect on domestic firms/plants. First, we discuss the possible consequences of exchange rate fluctuation on domestic or non-exporting firms. Owing to the heightened exchange rate volatility, discouraged exporting firms may substitute its exporting with domestic operation, which leads to intense competition in the domestic market. Thus, “market stealing effect” driven by discouraged exporters has a negative influence on domestic firm’s market share. Furthermore, this indirect negative effect of volatility would be more distinct for rival domestic firms (over a certain productivity level) against the exporters. The exchange rate volatility shock has a direct effect on exporters. As only exporters are exposed to the volatility shock, the shock would have a greater negative effect on exporters than on domestic firms. However, one may argue that exporting firms would be less sensitive to the external shock than non-exporters because productivity is positively related to a firm’s exporting status. Bernard et al. (2007), using the US manufacturing firm-level data, find that exporters are systematically more productive than non-exporters. Jang et al. (2015) also show that Korean firms that are more productive are engaged in exporting activity more and vice versa. Using data 2. Theoretical Background 15 Figure 2. Productivity Distribution: Exporter vs Non-exporter of Korean manufacturing plants, in Figure 2, we plot the normalized productivity at the industry mean productivity separately for exporters and non-exporters. Certainly, exporters’ productivity distribution in green is located on the right-hand side of non-exporters’ distribution. Among exporters, if they face exactly the same degree of exchange rate volatility shock, less productive firms are more sensitive to the shock because they would not be able to adjust the shock due to their limited resources. However, more productive firms tend to be exposed to a greater exchange rate volatility shock because they tend to have a larger share of foreign sales out of total sales. Because productivity and the exposure to the shock act as independent attributes to determine the relationship between exchange rate volatility and productivity, the volatility effect on productivity would not be linear. The negative effect of exchange rate volatility on productivity would be more pronounced for not only the least productive exporting firms (owing to lower productivity) but also the most 16 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants productive exporting firms (owing to higher exposure to the shock). Figure 3, using Helpman’s (2006) exposition on Melitz framework, summarizes our theoretical argument on the exchange rate volatility effect on productivity separately for exporters and non-exporters. Figure 3. Theoretical Paradigm for an Inverted W-shape Volatility Effect Based on Melitz Model (Helpman, 2006) 2. Theoretical Background 17 3. Data and Methodology 3-1. Data and TFP Estimation We use plant-level data of South Korean manufacturing industries for the period 1990–2007.7 The unpublished plant-level data are from the Annual Report on Mining and Manufacturing Survey in Statistics Korea. Statistics Korea has originally done a complete enumeration survey of all plants in Korea and compiled the survey data at the plant level. The data cover all plants with 10 or more employees in 461 manufacturing industries at 5-digit KSIC (Korean Standard Industrial Classification). The unbalanced panel data are for about 51,000 to 93,000 firms for each year during the 1990–2007 period. For each year, production structures and export statuses are available. Note that Statistics Korea permits credential users to access this database only through their online Microdata Integration Service. Our baseline measurement for exchange rate volatility is constructed using daily Korean exchange rate against the US dollar. We compute an annual standard deviation using these daily rates. Choi and Pyun (2016) utilize the “industry”-level real exchange rate data collected from the Research Institute of Economy, Trade and Industry (RIETI). However, owing to the limited data availability of this industry rate, we use a countrylevel exchange rate to compute the exchange rate volatility. For the robustness of the results, we use the monthly real exchange rate data from the OECD statistics. Annual standard deviations of monthly real exchange rates are calculated as an alternative measurement of exchange rate volatility. We estimate the plant-level productivity by industry following Levinsohn and Petrin (2003) (hereafter LP) to control for the endogeneity of input choices influenced by productivity shocks. For instance, plants ex- 7 We exclude data in year 2000 because of firm id error in the data. 18 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants pand their output and consequently increase their inputs in response to a positive productivity shock. Here, without addressing the simultaneity issue, the input estimates of the production function would be biased upward. LP propose a novel approach to address the simultaneity problem by using intermediate inputs as a proxy for an unobserved time-varying productivity shock.8 We specify the production function for each industry in equation (1) and estimate the plant-level productivity as follows: vit 0 l lit k kit it it (1) , where 𝑣𝑖𝑡 is the logarithm of manufacturing plant i’s output measured as value added; 𝑙𝑖𝑡 is the logarithm of freely variable labor input; and 𝑘𝑖𝑡 is the logarithm of real capital, which is a state variable. Here, value added is calculated as revenue less cost and deflated with the producer price index; labor input is measured with the number of workers; and real capital is defined as fixed assets deflated by the capital equipment price index. The deflators are from the Bank of Korea. The error term can be decomposed with the transmitted productivity component given as i ,t and an i.i.d. component i ,t . The plant-level TFPs are not comparable across industries, so there is a caveat when pooling TFP measures across industries. In addition, our quantile regression approach evaluates the heterogeneous marginal effects of exchange rate volatility on productivity at different levels of TFP quantiles. In equation (2), we standardize the estimated TFPs for each industry by differencing TFPs from the industry mean and scaling it at the mean. Then, we pool the rescaled TFPs across industries as follows: 8 Olley and Pakes (1996) use investment as a proxy for an unobserved time-varying productivity shock, it is valid only when investments respond smoothly to productivity shocks and sample observations report positive investment. 3. Data and Methodology 19 STFPijt ln TFPijt ln TFPjt ln TFPjt , (2) where ln TFPijt is log of estimated TFP for plant i in industry j at t, and ln TFPjt is the mean of log TFP in industry j. Table 1 provides the descriptive statistics of the key variables for analysis according to the exchange rate regime chosen by the Korean government. We add the number of employment as a proxy for plant size. The Herfindahl index (HHI) is calculated as s , where sit is the market share of i j 2 it plant i in industry j at time t. This is a proxy for the degree of industry concentration capturing the information on each plant’s market share. This is ranged from 0 (perfect competition) to 1 (monopolistic producer). The measures for internationalization are exporting dummy coded as 1 if plants have export volume greater than zero at year t. One concern about our analysis is that the data include the Asian financial crisis period (1997-1998). Table 1. Summary Statistics 20 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants To avoid any structural shock during this period, we use the sub-sample analysis before 1997 and after 1998 as the Korean exchange rate regime was changed in 1997. 3-2. Methodology: Quantile Regression The standard linear regression is a useful tool for summarizing the average relationship between an outcome and a set of regressors, based on the conditional mean function E(y|x). However, the relationship between outcome y and regressor x could be more complex at different points in the conditional distribution of y. The advantage of quantile regression is that it is more robust for the sample having outliers than mean regression (Koenker and Hallock 2001). This quantile regression also allows a richer understanding of the data. In particular, it is more suitable for examining a heteroskedastic data set. We specify our econometric model for the plantlevel productivity as follows: 𝑆𝑇𝐹𝑃𝑖𝑗𝑡 = 𝐸𝑋𝑅_𝑉𝑜𝑙𝑡−1 𝛽𝜃 + 𝑋𝑖𝑗𝑡−1 𝛾𝑖𝑗𝜃 + 𝛼𝑖 + 𝜖𝜃,𝑖𝑗𝑡 with QuantileƟ(𝑆𝑇𝐹𝑃𝑖𝑗𝑡 |𝐸𝑋𝑅_𝑉𝑜𝑙𝑡−1)= 𝛽𝜃 , (3) where STFPijt is the standardized (log of) TFP for plant i in industry j at t ; 𝐸𝑋𝑅_𝑉𝑜𝑙𝑡−1 is a lagged value of exchange rate volatility; and 𝑋𝑖𝑗𝑡−1 is a vector of other controls that affect plant-level TFPs, which includes firm size, exporter dummy, and HHI. We also use a lagged value for these variables to reduce any endogeneity; 𝛼𝑖 represents plant fixed effects. Because we consider how the exchange rate volatility shapes plant-level TFPs differently with respect to the TFP level, controlling for individual plantlevel unobserved (time-invariant) factors is important to avoid any omitted variable bias. Hence, we include plant fixed effects in our specification. To 3. Data and Methodology 21 estimate the quantile regression with plant fixed effects, we follow Canay’s (2011) two-step approach. 𝜖𝜃,𝑖𝑗𝑡 is an error term across quantiles. Our main question is how different exchange rate regimes (policy choices) lead to different 𝛽𝜃 . Therefore, we estimate the above quantile regression using sub-samples according to the regime shift that occurred in 1997. 22 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants 4. Empirical Results 4-1. Main Results We begin by using the quantile regression to estimate the coefficients in equation (3) separately before 1997 and after 1998. As noted, we exclude the Asian financial crisis period (1997-1998) to avoid any abnormal shock on plant TFPs and other macroeconomic fundamentals. We estimate the model at each quantile (or decile) of the conditional productivity distribution (i.e., the 10th, 25th,..., 90th percentiles). Figure 4 shows our main results on the exchange rate volatility effect on plant standardized TFP at each TFP quantile. The x-axis reports the TFP quantile at which the regression model was estimated. The y-axis shows the marginal effect of the volatility on TFPs. First, in each panel, we plot the average OLS estimates on exchange rate volatility (horizontal navy line) and its 95 percent confidence intervals (horizontal dash and dot lines). In two sub-samples of different exchange rate regimes, the exchange rate volatility shows negative effects on plant TFP; this implies that a higher volatility might lead to a decrease in firm efficiency. More interestingly, the negative effects of exchange rate volatility are about 10 times greater in the market average rate regime than in the free floating period. This requires more discussion but a possible explanation is as follows: a firm’s responses to an exchange rate fluctuation under different exchange rate regimes would have different consequences on productivity. During the hybrid regime when the government restricted the exchange rate fluctuation, firms and other economic agents would expect a possible limit of changes in exchange rate. It is likely that firms do not prepare much to avoid the loss from exchange rate fluctuation, rather than making 4. Empirical Results 23 an effort to hedge against exchange rate fluctuation. Thus, the marginal effect of exchange rate volatility would be greater in the hybrid regime than in the free floating regime. Furthermore, in Figure 4, the marginal effects of exchange rate volatility on productivity vary over TFP quantiles. The red bold line represents the marginal effect of exchange rate volatility on plant TFP at each TFP quantile, and the dotted lines indicate the 95 percent confidence intervals. Whenever the quantile coefficients and their confidence intervals deviate from the OLS results, it means that there are significant differences in the effects of the volatility across quantiles. For instance, the results in Panel A of Figure 4 show that the coefficient on exchange rate volatility from the OLS estimate is −1.94, which imply that a 10 percent increase in exchange rate volatility from its mean (=0.114) is associated with a decrease of roughly Figure 4. Quantile Regression Results A. Market average rate regime: 1990-1997 B. Free floating:1999-2007 Note: The x-axis reports the TFP quantile at which regression the model was estimated. The y-axis shows the marginal effect of exchange rate volatility on manufacturing plant TFPs. The average OLS estimate is depicted as the horizontal black line and its 95% confidence intervals as the horizontal dash and dot lines. The marginal effect of the volatility on TFP at each TFP quantile are shown as a red bold line, and the dotted lines indicate the 95% confidence intervals. 24 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants Table 2. Main Results: Sub-sample with Different Exchange Rate Regime, 1990-1997 vs 1999-2007 Note: Bootstrapped standard errors are reported in parentheses. *, **, and *** indicate significance at the 10%, 5%, and 1% levels, respectively. Source: Author’s Calculation. 10 percent in productivity from its mean (=−0.229). However, the coefficients on the volatility vary over TFP quantiles. While the coefficient on exchange rate volatility is −2.07 at the 90th percentile of the productivity distribution, such coefficients on the volatility at the 10th and 25th percentiles are −1.49 and −1.25, respectively. Table 2 presents the coefficient estimates on the exchange rate volatility for two sub-samples at the 10th, 25th, 50th, 75th, and 90th conditional percentiles. We find that both results before 1997 and after 1998 exhibit inverted W-shape quantile regression curves. The common in both shapes is that the negative effect of exchange rate fluctuation becomes greater at both tails of productivity quantiles. The result also suggests that the plants with a medium range of productivity also lost much from the exchange rate volatility. As discussed in section 2, it is evident that the least productive firms (regardless of whether they are exporters) were more sensitive to the external shock. Among exporters, the least productive exporters (could be in the medium range of productivity quantiles) were also vulnerable to the exchange rate volatility shock. However, the greater negative effect for most productive firms also makes sense in that a firm’s orientation of foreign market via exporting or FDI is positively associated with productivity, and firms with higher TFPs tend to have a greater volatility shock. In sum, our results suggest that while the least productive plants were likely to focus on domestic market and might not respond sensitively to exchange rate volatility, most productive plants are often operating in foreign market and more sensitive to exchange rate volatility. Our findings are also in line with those of the previous study by Caglayan and Demir (2014) in that they also find that export-oriented firms are hurt more from volatility. The inverted W-shape quantile curve just shifted upward as the exchange rate regime was changed from market average exchange rate regime to free floating, which is consistent with the OLS estimates that we discussed above. 26 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants 4-2. Shape of Quantile Regression Curves: Exporters vs. Non-exporters As discussed, the greater negative effects of exchange rate volatility on productivity for plants with medium and highest TFP levels need to be investigated thoroughly in that productivity is compounded by many other firm characteristics, particularly exporting status and export share. For robustness of results, we repeat our analysis for exporters and non-exporters and compare the effects of exchange rate volatility on their productivities. Exporters are defined as those plants that are now exporting or have past experience of exporting, and otherwise non-exporters. For two subsamples of exchange rate regime, we divide each into sub-samples of exporters and non-exporters and examine the exchange rate volatility effect on productivity. Note that the importing firms are also influenced by exchange rate volatility. However, owing to the data limitation of firm import share, we focus more on the consequences of exporting firms. Moreover, Choi and Pyun (2016) also show that exporting firms are highly correlated with importing firms using another Korean manufacturing firm dataset; their correlation is about 0.5. The results are reported in Panels A and B of Table 3. The results in Panel A for market average rate regime show that the negative effects of exchange rate volatility become larger for more productive non-exporters (a downward sloping quantile regression curve). Here, the indirect competition effect may dominate the productivity effect, which buffers the negative shock. However, for exporters, the negative marginal effect exhibits an inverted U-shape along the TFP quantiles, which may correspond to the right arch in our main results in Figure 4A. Panel B shows the results for the free floating regime. For nonexporters, the marginal effect depicts an inverted U-shape, which could match the left arch in our main result in Figure 4B. For exporters, the re- 4. Empirical Results 27 sult is interesting in that the marginal effect again exhibits an inverted Wshape. This requires another detailed investigation among exporters: The complex shape of the curve may be due to the fact that a significant share of the exporters group is consisted with multinationals while multinationals tend to have higher productivity than others. 4-3. Robustness: Alternative Volatility Measure To strengthen the robustness of the results, we introduce the alternative measurement of exchange rate volatility using monthly “real” exchange rate data collected from the OECD statistics. Real effective exchange rate index is constructed by a basket that consists of multiple currencies and corresponding constant trade weights. Therefore, this index captures not only the exchange rate volatility between Korea and the United States but also other important trading partners. The results in Table 4 are consistent with our main findings in Table 2. 4-4. Exchange Rate Volatility with Adjacent Major Trading Partners: China vs. Japan Here, we introduce the bilateral exchange rate with Korea’s major trading partners, such as China and Japan. We examine the linkage between their volatility and Korean plants’ productivity. In particular, two major trading partners, China and Japan, have different exchange rate practice: Japan has implemented free floating since the collapse of Bretton Woods system in 1971, while China has used almost fixed exchange rate over the sample period (China introduced managed float in 2005). Thus, the two cross-exchange rates of the Korean won against the Japanese yen and the Chinese yuan via the US dollar would have different implications on the 28 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants Table 3. Additional Results: Never-exporters vs. Exporters Panel A. Market average rate regime (a la pegged regime) (1990-1997) Table 3. Continued Panel B. Free floating (1999-2007) Note: Bootstrapped standard errors are reported in parentheses. *, **, and *** indicate significance at the 10%, 5%, and 1% levels, respectively. Source: Author’s Calculation. Table 4. Robustness with Real Exchange Rate Volatility, 1990-1997 vs 1999-2007 Note: Bootstrapped standard errors are reported in parentheses. *, **, and *** indicate significance at the 10%, 5%, and 1% levels, respectively. Source: Author’s Calculation. exchange rate volatility effect on productivity. Table 5 shows the quantile regression results on the exchange rate volatility effect on plant standardized TFP at each TFP quantile, using ChinaKorea cross exchange rate and Japan-Korea cross exchange rate. The results for Korea’s cross exchange rate volatility between China and Japan turn out to be different. First, we discuss the results for the free floating regime. The Korean won exchange rate volatility against the Chinese yuan had a significantly negative effect on Korean plant productivity over all TFP quantiles and this negative effect was pronounced for the most productive plants in this free floating regime. However, the Korean exchange rate volatility against the Japanese yen had rather greater negative influence on the least productive Korean plants compared to that against the Chinese yuan. Moreover, the significant negative effects of volatility against both currencies are observed for the plants with medium productivity levels. This finding can be explained by several factors among these three countries. First, China has became Korea’s number one trading partner since 2002. This increasing share of Korea’s trade to China would explain why most productive Korean (exporting) firms/plants were more sensitive to the exchange rate fluctuation against the Chinese yuan compared to the Japanese yen. In addition, the currency liquidity and/or vehicle currency use for invoicing in international trade between the Chinese yuan and Japanese yen may influence the exchange rate volatility effect on Korean plant-level productivity. The Japanese yen is considered as one of the key currencies, as well as more frequently used as a vehicle currency (after the US dollar) compared to the Chinese yuan during our sample period (see Goldberg and Tille 2008).9 In this regard, the less negative effect of the Japanese yen’s volatility compared to the Chinese yuan observed for the plants 9 Note that many recently discuss a possibility of using Chinese Yuan as a vehicle currency in international transactions vividly. 32 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants Table 5. Exchange Rate Volatility of China-Korea vs that of Japan-Korea Note: Bootstrapped standard errors are reported in parentheses. *, **, and *** indicate significance at the 10%, 5%, and 1% levels, respectively. Source: Author’s Calculation. over 50th percentiles (maybe exporting firms) can be consistent with previous studies. That is, more developed financial (currency) market might moderate the exchange rate volatility effect on productivity (Aghion et al. 2009). In the period with market average exchange rate regime, the results for the volatility against the Chinese yuan are consistent with our main results in Table 2. Overall, the negative effect of the volatility on productivity in this period is about 10 times greater than in the next period with free floating. However, the coefficients on exchange rate volatility of the Japanese yen are puzzling. They exhibit significant and positive signs, meaning that the exchange rate volatility against the Japanese yen had a positive effect on Korean manufacturing plant productivity before 1997. Thus, this puzzling finding requires detailed investigation. 34 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants 5. Discussion and Conclusion Using Korean manufacturing plant-level data for 1990-2007, we find that the negative effect of volatility on productivity was more pronounced during the period when the exchange rate variation was restricted, compared to the period with the free floating exchange rate regime. This finding implies that firms/plants seem to be more ready to hedge the exchange rate fluctuation allowed in the free floating regime, whereas they might rely on the government intervention in the forex market under the hybrid regime. However, this does not mean that free floating is better than the hybrid regime to moderate the negative effect of exchange rate volatility because the source of negative shock is still exchange rate fluctuation. Thus, the government may help firms by providing detailed information on how exporting firms can hedge exchange rate fluctuation using various hedging tools, such as financial derivatives or foreign debts. In addition, the government may also help firms by promoting the financial derivative market. Another interesting finding from this study is that the negative effects of exchange rate volatility on productivity exhibit an inverted W-shape. The exchange rate volatility was negatively associated with productivity and this effect was particularly more pronounced for the plants with the lowest, median, and highest productivities over productivity quantiles. We also show that these double arches may be driven by the distinction between exporters and non-exporters. While the intense negative effect of the volatility in medium TFP quantiles could be because of the least productive exporting firms or rival domestic firms against exporters, the magnified negative effect in the highest TFP quantile may be driven by the most productive exporting firms with the uppermost exposure to the volatility shock owing to its large export share. This finding shows that not only exchange rate level but also its fluctuation greatly influences the exporting 5. Discussion and Conclusion 35 firm/plant-level efficiency. Thus, the government needs to consider how to reduce unexpected exchange rate volatility. 36 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants References Aghion, P., P. Bacchett, R. Ranciere, K. Rogoff. 2009. “Exchange Rate Volatility and Productivity Growth: The Role of Financial Development.” Journal of Monetary Economics, 56, 4, 494–513. Aizenman, J. 2003. “Volatility, Employment and the Patterns of FDI in Emerging Markets.” Journal of Development Economics, 72, 2, 585-601. Aizenman, J., N. Marion. 1999. “Volatility and Investment: Interpreting Evidence from Developing Countries.” Economica, 66, 262, 157–179. Bernard, A. B., J. B. Jensen, S. J. Redding, and P. K. Schott. 2007. “Firms in International Trade.” The Journal of Economic Perspectives, 21, 3, 105– 130. 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Triest. 2003. “Job Creation, Job Destruction and the Real Exchange Rate.” Journal of International Economics, 59, 2, 239–265. Koenker, R., K.F. Hallock. 2001. “Quantile Regression.” Journal of Economic Perspectives, 15, 4, 143–156. Levinsohn, J. and A. Petrin. 2003. “Estimating Production Functions Using Inputs to Control for Unobservables.” The Review of Economic Studies, 70, 2, 317–341. Nam, S. W. and S. J. Kim. 1999. “Evaluation of Korea’s Exchange Rate Poli- 38 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants cy.” Changes in Exchange Rates in Rapidly Developing Countries: Theory, Practice, and Policy Issues, 235-268. NBER-EASE volume 7. Chicago: University of Chicago Press. Olley, G. S., and A. Pakes. 1996. “The Dynamics of Productivity in the Telecommunications Equipment Industry.” Econometrica, 64, 1263–1297. Serven, L. 2003. “Real Exchange Rate Uncertainty and Private Investment in LDCs.” The Review of Economics and Statistics, 85, 1, 212–218. References 39 Appendix. Production Function Estimation Results Table A1. Estimates of Production Functions for 18 Manufacturing Industries Note: The table reports a two-sided test. For one side of the test for IRS, the p-value can be obtained by dividing the reported p-value in half. 40 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants List of KIEP Working Papers (2012-2016. 10) 2016 2015 16-08 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants: Market Average Rate Regime vs Free Floating CHOI Bo-Young and PYUN Ju Hyun 16-07 To Whom does Outward FDI Give Jobs? 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Every article published in the Journal is given an honorarium of KRW 2,500,000; and annual nominations for the outstanding and noteworthy articles include KRW 5,000,000 prize and a detailed nomination statement describing how the selected papers have contributed to the knowledge of international economics KIEP Working Paper 16-08 The Effect of Exchange Rate Volatility on Productivity of Korean Manufacturing Plants: Market Average Rate Regime vs Free Floating CHOI Bo-Young and PYUN Ju Hyun This study examines how exchange rate volatility can influence total factor productivity (TFP) in various dimensions. Using Korean manufacturing plant-level data for 1990-2007, we first compare and contrast the effects of exchange rate volatility on TFPs between two different exchange rate regimes—pegged and free floating. We find that the exchange rate volatility had a negative effect on productivity in both regimes but this negative effect was greater during the period when exchange rate fluctuation was restricted, compared to the period with free floating rate. We also find that the negative effects of the volatility on productivity were heterogeneous over TFP quantiles and exhibited an inverted W-shape curve. In particular, the negative effects were more pronounced for exporting plants that had the lowest or highest TFPs. Building C, Sejong National Research Complex, 370, Sicheong-daero, Sejong-si, Korea Tel. 82-44-414-1114 Fax. 82-44-414-1001 www.kiep.go.kr ISBN 978-89-322-4259-0 978-89-322-4026-8(set) Price USD 3