Examining the Volatility of Taiwan Stock Index Returns via a Three-Volatility-Regime Markov-Switching ARCH Model

被引:4
|
作者
Ming-Yuan Leon Li
Hsiou-Wei William Lin
机构
[1] National Chi Nan University,Department of Banking and Finance
[2] National Taiwan University,Department of International Business
[3] Taiwan No. 1,undefined
[4] Sec. 4,undefined
[5] Roosevelt Road,undefined
关键词
Markov-switching ARCH models; stock index returns; Asian financial crisis;
D O I
10.1023/A:1024887315531
中图分类号
学科分类号
摘要
This study adopts Hamilton and Susmel's (1994) Markov-switching ARCH (hereafter SWARCH) model to examine the volatility of the valued-weighted Taiwan Stock Index (hereafter TAIEX) returns. We also conduct sensitivity tests on comparison observations of Dow Jones and Nikkei stock indices. Our empirical findings are consistent with the following notions. First, the SWARCH model appears to outperform the competing ARCH and GARCH models in estimating the volatilities of TAIEX. Second, the three-volatility-regime setting is descriptive for TAIEX and Nikkei. In contrast with Hamilton and Susmel (1994), the contemporaneous Dow Jones adopted in this paper has only two regimes. Our test results suggest that the optimal number of volatility regimes is sensitive to the choice of sample periods. Third, our empirical results also lend an explanation to such phenomenon: the probability that TAIEX directly moves from a low (high) volatility regime to the high (low) volatility regime approaches zero, whereas TAEIX happened to be in a low volatility regime during the pre-financial-crisis period from April, 1996 to July, 1997. These can explain why Taiwan was one of Asia's few star performers compared with recession-hit neighbors during the first eighteen months of Asia's financial crisis.
引用
收藏
页码:123 / 139
页数:16
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