Abstract

Policy makers need accurate forecasts about future values of exchange rates. This is due to the fact that exchange rate volatility is a useful measure of uncertainty about the economic environment of a country. This paper applies univariate nonlinear time series analysis to the daily (TZS/USD) exchange rate data spanning from January 4, 2009 to July 27, 2015 to examine the behavior of exchange rate in Tanzania. To capture the symmetry effect in exchange rate data, the paper applies both ARCH and GARCH models. Also, the paper employs exponential GARCH (EGARCH) model to capture the asymmetry in volatility clustering and the leverage effect in exchange rate. The paper reveals that exchange rate series exhibits the empirical regularities such as clustering volatility, nonstationarity, non-normality and serial correlation that justify the application of the ARCH methodology. The results also suggest that exchange rate behavior is generally influenced by previous information about exchange rate. This also implies that previous day’s volatility in exchange rate can affect current volatility of exchange rate. In addition, the estimate for asymmetric volatility suggests that positive shocks imply a higher next period conditional variance than negative shocks of the same sign. The main policy implication of these results is that since exchange rate volatility (exchange-rate risk) may increase transaction costs and reduce the gains to international trade, knowledge of exchange rate volatility estimation and forecasting is important for asset pricing and risk management.

Highlights

  • The paper employs exponential generalized autoregressive conditional heteroskedastic (GARCH) (EGARCH) model to capture the asymmetry in volatility clustering and the leverage effect in exchange rate

  • To achieve this goal the empirical analysis involves autoregressive conditional heteroscedastic (ARCH)/ GARCH models, so that to investigate the major volatility characteristics accompanied with exchange volatility

  • The paper applies an EGARCH model to capture the asymmetry in volatility clustering and the leverage effect in exchange rate for the period spanning from January 4, 2009 to July 27, 2015

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Summary

Introduction

M. Epaphra 122 extended time period followed by periods in which there is calm (Gujarati & Porter [1]). Epaphra 122 extended time period followed by periods in which there is calm (Gujarati & Porter [1]) This volatility of exchange rates, after the fall of the Bretton Woods agreements has been a constant source of concern for both policymakers and academics (Héricourt & Poncet, [2]). Knowledge of volatility is of crucial importance because exchange-rate risk may increase transaction costs and reduce the gains to international trade. There are greater potential vulnerabilities and risks to the stability of financial system in the country following a rapid growth in the volume of financial transactions, increased complexity of financial markets and a more interconnected global economy. Understanding and estimating exchange volatility is important for asset pricing, portfolio allocation, and risk management (Erdemlioglu et al [3])

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