Abstract

Based on a time-varying copula approach and the minimum spanning tree (MST) method, we propose a time-varying correlation network-based approach to investigate dynamics of foreign exchange (FX) networks. In piratical terms, we choose the daily FX rates of 42 major currencies in the international FX market during the period of 2005–2012 as the empirical data. The empirical results show that (i) the distributions of cross-correlation coefficients (distances) in the international FX market (network) are fat-tailed and negatively skewed; (ii) financial crises during the analyzed period have a great effect on the FX network’s topology structure and lead to the US dollar becoming more centered in the MST; (iii) the topological measures of the FX network show a large fluctuation and display long-range correlations; (iv) the FX network has a long-term memory effect and presents a scale-free behavior in the most of time; and (v) a great majority of links between currencies in the international FX market survive from one time to the next, and multistep survive rates of FX networks drop sharply as the time increases.

1. Introduction

Financial markets are accounted as complex dynamical systems with large quantities of interacting unties [1, 2]. Financial agents usually interact with each other and their interbehaviors change over time, which means that the interbehaviors are dynamics and widely found in economics and finance [3, 4]. To capture the interactive behaviors or cross-correlations among heterogeneous entries in financial markets, many scholars generally resort to a powerful analytical tool, namely, correlation network-based methods, which include the minimum spanning tree (MST) approach proposed by Mantegna [5], the correlation threshold methods developed by Boginski et al. [6] and Onnela et al. [7], and the approach of planar maximally filtered graph (PMFG) designed by Tumminello et al. [8]. The network analysis idea has been widely applied in financial markets, such as stock markets [914] and foreign exchange (FX) market [1520]. Among correlation network-based approaches, the MST method is often preferred because of its robustness and simplicity [10]. However, the MST method and its improvements ignore the volatiles and nonlinearities of financial time series. That is to say, they cannot really detect the dynamic interbehaviors among different financial agents in financial markets. Therefore, the purpose of this paper is to propose a dynamic correlation network-based approach by combining a time-varying copula method and the MST approach for studying the dynamic topology and market natures of financial networks. In practical terms, we focus our study on networks’ dynamics of the international FX market because it is the biggest and most liquid financial market where foreign currencies are traded [21].

The motivations that led us to combine the two aforementioned methods to investigate dynamics of FX networks can be summed up as follows. On the one hand, the MST and its improvements are usually used to identify the clustering behavior and dominant currencies in the FX network. To examine the dynamic behavior of the network, pervious works often employ a rolling window analysis, such as [10, 22]. However, some drawbacks are found in the dynamic MSTs using a rolling window analysis as follows. (i) The choice of parameters of the rolling window is dependent on the scholars’ preference; that is, the window width and step length are selected arbitrarily [23]. For example, Onnela et al. [10] set the size of window as four calendar years (approximately 1000 trading days), while Song et al. [22] fix the length of window as 1250 trading days. (ii) In the MST method, the cross-correlation coefficient between two financial units is usually measured by the Pearson’s correlation coefficient (PCC) that is a linear correlation method. Nevertheless, the PCC cannot quantify the nonlinear relationship between two heterogeneous entries [21] and ignores financial variables’ volatile and nonnormality features [24]. It should be noted that some works attempt to apply other dynamic approaches in the MST. For example, Lyócsa et al. [23] employ the dynamic conditional correlations (DCC) multivariate generalized autoregressive conditional heteroscedasticity (MV-GARCH) approach to construct the MST for the US stock market. Trancoso [25] uses the Baba-Engle-Kraft-Kroner (BEKK) model to develop the conditional correlation matrix and apply it in the dynamic network analysis. However, Lyócsa et al. [23] and Trancoso [25] assume that the financial variables obey the normal distribution and neglect their nonnormality characteristics.

On the other hand, copula methods proposed by Sklar [26, 27] are a widely useful tool for deriving joint distributions given the marginal distributions, especially when the variables follow nonnormal distributions [28]. Besides, copulas can be employed to investigate the dependence beyond the linear cross-correlation by the PCC and allow for a time-varying nonlinear analysis. Moreover, copulas can be supplied as a powerful analytical instrument to measure dynamic dependence structures between financial variables. In a word, copulas have better properties and more advantages (see [29, 30]) than the traditional linear correlation methods and attract many scholars to use them in various finance applications [3137]. For instance, Patton [35] constructs time-varying copula models to examine the dependence between two FX rates, that is, Deutsche Mark/US Dollar (DM/USD) and Japanese Yen/US Dollar (JPY/USD). He also makes a comparison between copulas and GARCH models and finds that the former can better describe the dependence or cross-correlation of FX rates than the latter. Diks et al. [36] use several copula models to analyze the dependence among five currencies (i.e., Canadian Dollar (CAD), Swiss Franc (CHF), European Euro (EUR), British Pound (GBP), and JPY) against USD and show that the Student’s -copula model is evidently superior to the Gaussian, Gumbel, and Clayton copula models. Dias and Embrechts [37] investigate the dependence between EUR/USD and JPY/USD from October 1, 2000, to October 1, 2008, by employing the time-varying copula-GARCH models. Their empirical results suggest that the dependence between the two currencies is dynamic and a time-varying copula approach with given correlation specifications has better outcomes than some conventional dynamic methods (e.g., BEKK).

In consideration of the above-mentioned motives, based on a time-varying copula approach and the MST method, we aim to construct time-varying FX networks and analyze their topological dynamics and market properties. We choose 42 major currencies’ daily FX rate series in the international FX market during the years 2005–2012 as the empirical data. In empirical process, we first use a time-varying copula to calculate the dynamic cross-correlation coefficients among different currencies. More specifically, we adopt an AR( )-GARCH(1,1)- model to characterize the marginal distribution of returns for FX rates and then estimate the dependence parameters of the time-varying Student’s -copula model and obtain time-varying cross-correlation coefficients. Next, on the basis of time-varying cross-correlation coefficients, we construct time-varying cross-correlation matrices (CMs) for 42 major currencies in the international FX market. Then, we transform the time-varying CMs into time-varying FX networks by the MST approach. Finally, we examine topological dynamics and statistic features for time-varying FX networks.

The remainder of the paper is organized as follows. Section 2 represents the empirical data. A time-varying correlation network-based approach by combining a time-varying copula model with the MST method is described in Section 3. In Section 4, the time-varying FX networks are constructed and main empirical results are showed. Some conclusions are drawn in Section 5.

2. Data Set

As for the empirical data set, we choose the daily FX rates of 42 major currencies in the international FX market from January 4, 2005, to December 31, 2012. Following Jang et al. [18] and Wang et al. [21], we select the special drawing right (SDR) as the numeraire. The 42 currencies are from 7 different continents or regions. Their detailed information is showed as follows: Africa: Egyptian Pound (EGP) and South African Rand (ZAR); Asia: Chinese Renminbi (CNY), Indian Rupee (INR), Indonesian Rupiah (IDR), Japanese Yen (JPY), Malaysian Ringgit (MYR), Pakistani Rupee (PKR), Philippines Peso (PHP), Singapore Dollar (SGD), South Korean Won (KRW), Taiwanese Dollar (TWD), Thai Baht (THB), and Vietnamese Dong (VND); Europe: British Pound (GBP), Czech Koruna (CZK), European Euro (EUR), Hungarian Forint (HUF), Icelandic Krona (ISK), Norwegian Krone (NOK), Polish Zloty (PLN), Romanian New Leo (RON), Russian Rubles (RUB), Swedish Krona (SEK), Swiss Franc (CHF), and Turkish New Lira (TRY); Latin America: Argentine Peso (ARS), Brazilian Real (BRL), Chilean Peso (CLP), Colombian Peso (COP), Peruvian New Sole (PEN), and Mexican Peso (MXN); Middle East: Bahrain Dinar (BHD), Israeli New Shekel (ILS), Jordanian Dinar (JOD), Kuwaiti Dinar (KWD), Saudi Arabian Riyal (SAR), and United Arab Emirates Dirham (AED); North America: Canadian Dollar (CAD) and US Dollar (USD); Pacific Ocean: Australian Dollar (AUD) and New Zealand Dollar (NZD). All the FX rates are obtained from the website of the Pacific Exchange Rate Service (http://fx.sauder.ubc.ca/data.html). We define the return of currency on day as , where is the daily FX rate of currency on day . During the analyzed period, each currency’s returns have 2003 observations.

3. Methodology

In this section, we first introduce the time-varying copula model including the model for marginal distributions, the dynamic Student’s -copula model, and the estimation of parameters. After that, we propose the time-varying correlation network-based approach by the MST method.

3.1. Model for Marginal Distributions

Following Patton [35] and Dias and Embrechts [37], we use an AR( -GARCH(1,1)- model, which considers the influences of asymmetric information, to characterize the returns’ marginal distributions of currency . The proposed model is defined as follows: where are autoregressive (AR) coefficients, obeys a Student’s -distribution, is the degree of freedom, and is the conditional variance of with the following parameter restrictions: , , , and . To be simple and effective enough, we use an AR process.

3.2. The Dynamic -Copula Model

According to Diks et al. [36] and Dias and Embrechts [37], the dynamic -copula model has a better capability for quantifying dynamic correlations in the FX rates data compared with Gaussian, Gumbel, and Clayton copula models. Therefore, in this paper, we employ the dynamic Student’s -copula model to capture time-varying cross-correlations in the international FX market. Let us briefly show the dynamic Student’s -copula model as follows.

For all , the density of dynamic Student’s -copula is defined by where represents the inverse of the cumulative distribution function (CDF) of the Student’s -distribution with degrees of freedom [39], denotes the linear correlation coefficient, and is the Gamma function.

As proposed in [31], the time-varying dependence coefficients of the Student’s -copula is defined as where is the modified logistic function, which can guarantee that cross-correlation coefficients retain in the interval at all times; are unknown parameters.

3.3. Estimation of Copula Parameters

Following Wang et al. [34] and Lai et al. [40], we adopt the inference-function-for-margins (IFM) method rather than the exact maximum likelihood method to estimate the copula parameters, because the former needs less computation than the latter. The IFM approach proposed by Joe and Xu [41] is a two-step estimation, which can be used to estimate the parameters of marginal distributions and the copula functions separately. For more detailed advantages, see [34, 41]. The procedure of IFM is showed as follows.

Step 1. The marginal parameters are estimated by the maximum likelihood (ML) as where denotes the conditional marginal density of currency at time , is the marginal parameter of returns of currency , and is the past information set.

Step 2. Given , suppose we have and ; the copula parameters can be estimated as

3.4. The Time-Varying Correlation Network-Based Approach

After obtaining the time-varying cross-correlation coefficients between any two currencies by a time-varying copula approach, we can build time-varying cross-correlation matrices (CMs) with elements for currencies and , where and (in our case, ). According to the idea of MST proposed by Mantegna [5], we transform time-varying CMs into the corresponding distance matrices by a distance measure that falls in the interval and meets the three axioms of the Euclidean distance. On the basis of time-varying distance matrices , we can obtain time-varying networks for studying the international FX market by using the Kruskal’s algorithm [42], that is, time-varying MSTs link currencies with edges. At each time , the MST network extracts the most important information (e.g., the strongest cross-correlations among currencies) in the international FX market. The proposed time-varying correlation network-based approach can be used to examine dynamics of the international FX market over time.

To investigate dynamics of FX networks, we introduce some topological measures as follows. We use a quantity of average path length (APL) to quantify the MST network’s density [43], which is defined by where is the length of the shortest path between two vertexes (currencies) and at time [21].

The measure of mean occupation layer (MOL) proposed by Onnela et al. [9, 10], which can be employed to analyze the spread of nodes on the MST and characterize the density changes of the network, is defined as where is the central vertex of the MST at time and defines the level of vertex with reference to , whose level is set as zero.

We introduce a concept of maximum degree , which is defined as the number of linkages of the central vertex in the MST [21, 43].

The scale-free behavior is widely found in different networks [10, 15, 21, 44, 45]. The scale-free network is such that the degree distribution of the network has a power-law tail; that is, where is the distribution function of vertex degrees , and is the exponent. We adopt a powerful tool developed by Clauset et al. [38] to estimate the power-law exponent and the corresponding value. This tool combines ML fitting methods with goodness-of-fit tests using the Kolmogorov-Smirnov statistic and likelihood ratios.

4. Empirical Results

4.1. Statistics of Cross-Correlation Coefficients and Distances of MST

Before studying dynamics of FX networks, we first analyze statistical properties of cross-correlation coefficients and distances of MST for 42 currencies in the international FX market. The cross-correlation coefficient series contains observations, at each time, while the distance set of MST only contains the most important links. In Figures 1 and 2, we present the time evolution graphs for four descriptive statistics (mean, standard deviation, skewness, and kurtosis) of cross-correlation coefficients and distances of MST, respectively. From each figure, it can be found that the four descriptive statistics vary over time and have a high volatile during the US subprime crisis and the 2008 world financial crisis. Especially in the period of June 2007 to July 2009, the international FX market (network) has stronger cross-correlations or smaller distances among currencies than other periods. This phenomenon confirms the proposal in [46] that the financial crisis often causes an increase of the market’s cross-correlations. As shown in Figures 1 and 2, it can be found that the values of skewness of cross-correlation coefficients and distances at any time are less than 0, while values of kurtosis for most of time are not equal to 3. This finding implies that the distributions of cross-correlation coefficients (distances) in the international FX market (network) are fat-tailed and negatively skewed.

4.2. MST Results

Considering that financial crises have a strong influence on the international FX market, we choose three days (i.e., January 5, 2005; January 2, 2008; and January 3, 2012) as representatives of three periods of before, during, and after financial crises. We present the three MSTs of 42 currencies in the international FX market in Figures 3, 4, and 5, respectively. In each MST figure, currencies from the same continent (region) are marked with the same color and shape.

From Figure 3, which demonstrates the situation before financial crises, one can find that most of currencies are gathered together according to geographical distributions, such as the European cluster, Asian cluster, Middle Eastern cluster, and Latin American cluster with EUR, MYR, AED, and MXN at their centers, respectively. In the FX network, the most important cluster is the international cluster with USD at its hub, which is directly or indirectly connected with currencies from Asia, Middle East, Latin America, and Africa. This outcome shows that USD is the predominant world currency. An interesting cluster is composed of GBP from Europe, NZD and AUD from Pacific Ocean, CAD from North America, and ZAR from Africa. We denote this cluster as the Commonwealth cluster because countries of the five currencies are members of the Commonwealth of Nations. In the MST network, we find that three major currencies in the international FX market, namely, EUR, CHF, and JPY are linked together.

As illustrated in Figure 4, during the global financial crisis, it can be observed that a lot has changed in the FX network. Notable changes are that USD becomes more centered in the MST, and the Latin American cluster and Asian cluster almost broke and their currencies directly or indirectly shift to USD. That is to say, during the financial crisis, most currencies from Asia, Middle East, and Latin America are tightly linked to USD, which indicates that the financial crisis can lead to a huge comovement effect among currencies in the international FX market. Although the European cluster and the Commonwealth cluster still remain in the network, their structure and currencies’ position changed as a result of the influence by the financial crisis.

Compared with the MSTs in Figures 3 and 4, as drawn in Figure 5, the FX network recovered to the precrisis state but its structure and currencies’ position have a lot of changes. For instance, the Asian cluster and Latin American cluster are formed again. At this point, the Commonwealth cluster has reappeared in the network with the same structure and position of their currencies as they appeared in Figure 3. One can see a remarkable change that JPY deviates from the European cluster and connects to the international cluster with USD at its centre. It is interesting to note that CNY links with USD, TWD, and SAR. One possible interpretation of the linkages is that US, Taiwan, and Saudi Arabia are China’s important and top trading partners.

From Figures 3, 4, and 5, we can obtain some conclusions as follows: (i) USD is the predominant world currency and has a powerful influence in the monetary system. (ii) The European cluster has a relatively stable structure and this may be ascribed to the influence of EUR. (iii) Currencies from the Middle East except for ILS always form a cluster and link to USD. Possible explanations are that Saudi Arabia, the United Arab Emirates, Kuwait, Jordanian, and Bahrain are oil-producing countries (the former three countries are members of the Organization of the Petroleum Exporting Countries) and have a mass of USD holdings, and most of their currencies peg to USD. (iv) The Commonwealth cluster is formed in the FX network, suggesting that the Commonwealth nations maybe have the same currency mechanism.

4.3. Dynamics of Topological Features

In this subsection, we aim to investigate the dynamical evolution of time-varying FX networks’ topological features. To begin with it, we show the calculation results of the average path length (APL), mean occupation layer (MOL), and maximum degree in Figure 6. As for the density measures of APL and MOL, both of their patterns do not show any tendency but with a fluctuation above and below. The values of maximum degree also have a large volatility, especially during the period of financial crises. Then, we estimate the power-law exponent and the corresponding value for each MST and present their outcomes in Figure 7. The estimated power-law exponent also changes over time and varies from 2.09 to 3.5. Although a handful of (about 309) values are less than 0.1, the power-law hypothesis can be accepted for most MSTs. This finding suggests the FX network is a scale-free network in most of the time. That is, a small number of vertexes (currencies, such as USD) always have the vast majority of connections, while most of vertexes have a very few links.

Similar to Qiu et al. [47], we further examine dynamics of topological features of FX networks by analyzing the time correlations. In practical terms, we employ the detrended fluctuation analysis (DFA) method proposed by Peng et al. [48], which can be used to quantify long-range correlations of a nonstationary time series. The DFA approach provides a relationship between the DFA function and the time scale , characterized by a power-law , where is the well-known Hurst exponent. The Hurst exponent , , and means uncorrelated, long-term correlated, and anticorrelated time series, respectively. The DFA functions of the APL, MOL, maximum degree , and the estimated power-law exponent are drawn in Figure 8. We calculate the Hurst exponents for APL, MOL, , and the power-law exponent as , , , and , respectively, which are all larger than 0.5. These results mean that the four topological measures are long-range correlated and thus suggest that the FX network has a long-term memory effect.

4.4. Single- and Multistep Survival Rates

In order to study the robustness of links over time and the long-term evolution of FX networks, respectively, we use two measures, that is, the single-step survival rate (SSR) and the multistep survival ratio (MSR) proposed by Onnela et al. [9, 10]. The measure of SSR is defined as the fraction of links found in two consecutive MST at times and ; that is, where represents the set of edges of the MST at time , is the intersection operator, and gives the number of elements in the set [10]. The MSR measure is defined by where stands for the initial time and is the step length.

In Figure 9, we plot the time-varying SSRs for the MST. The mean value of SSR is close to 0.92, which shows that a great majority of links between currencies in the international FX market survive from one time to the next. Moreover, we find that about 80 SSRs are equal to 1, indicating that the two consecutive networks at times and are identical. We also investigate the time correlations of the SSR series by the DFA method and present the results in Figure 10. One can find that the Hurst exponent for the SSR series is , once again suggesting that the long-range memory effect exists in the FX network. In Figure 11, we show the MSR of MST of 42 currencies in the international FX market as a function of time for different initial time . In Figure 11, the initial time is the first trading date of the year, and 8 curves of MSR are presented. For each curve of MSR, it drops rapidly as the time increases, which implies that the long-term stability of the FX network is falling as the time is increasing. However, we also find that each MSR is usually unchanged and moves toward a constant in the last or middle period of time, meaning that some structures or clusters (e.g., the Middle Eastern cluster) of the FX network are always preserved and stabilized.

5. Conclusions

In this paper, we investigate the daily FX rates of 42 major currencies in the international FX market during the period of 2005–2012 and construct time-varying FX networks by a time-varying copula approach and the MST method. In detail, we first use the AR( )-GARCH(1,1)- model to characterize the returns’ marginal distributions of FX rates. Then we employ the time-varying Student’s -copula to calculate the dynamic cross-correlation coefficients between each pair of rates. Finally we adopt the MST to build time-varying FX networks and analyze the networks properties including the dynamics and time correlations of topological features and survival rates of the MST.

Some basic finding for examining FX networks in this research can be summarized as follows. (i) By analyzing the descriptive statistics of cross-correlation coefficients and distances of MST, we find that distributions of cross-correlation coefficients (distances) in the international FX market (network) are fat-tailed and negatively skewed. (ii) On basis of MSTs for three different periods, we observe that some currencies gather together and form into several clusters, such as the international cluster with USD at its center, the Middle Eastern cluster, and the European cluster. The financial crises have a great influence on the FX network’s topology structure and lead to USD becoming more centered in the MST because lots of currencies from Asia, Latin America, Middle East, and Africa are directly or indirectly linked to USD. (iii) The topological measures of the FX network present a large fluctuation and have a long-term memory effect. By estimating the degree distribution of MST, we find that the FX network is a scale-free network in most of the time. (iv) A great majority of links between currencies in the international FX market survive from one time to the next, and multistep survive rates descend sharply as the time increases.

Conflict of Interests

The authors declare that there is no conflict of interests regarding the publication of this paper.

Acknowledgments

The authors thank C. Yu who works in the Guosen Securities Co., Ltd., for helpful discussions. This work was supported by the Fundamental Research Funds for the Central Universities of Hunan University, the Hunan Provincial Innovation Foundation for Postgraduate (Grant no. CX2013A006), the Scholarship Award for Excellent Doctoral Student granted by the Ministry of Education of China, the National Natural Science Foundation of China (Grant no. 71373072), the Specialized Research Fund for the Doctoral Program of Higher Education (Grant no. 20130161110031), the China Postdoctoral Science Foundation (Grant no. 2013M530376), and the Foundation for Innovative Research Groups of the National Natural Science Foundation of China (Grant no. 71221001).