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Evaluating the volatility forecasting performance of best fitting GARCH models in emerging Asian stock markets

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posted on 2024-11-14, 07:48 authored by Chaiwat Kosapattarapim, Yan-Xia Lin, Michael McCraeMichael McCrae
While modeling the volatility of returns is essential for many areas of finance, it is well known that financial return series exhibit many non-normal characteristics that cannot be captured by the standard GARCH model with a normal error distribution. But which GARCH model and which error distribution to use is still open to question, especially where the model that best fits the in-sample data may not give the most effective out-of-sample volatility forecasting ability. Approach: In this study, six simulated studies in GARCH(p,q) with six different error distributions are carried out. In each case, we determine the best fitting GARCH model based on the AIC criterion and then evaluate its outof- sample volatility forecasting performance against that of other models. The analysis is then carried out using the daily closing price data from Thailand (SET), Malaysia (KLCI) and Singapore (STI) stock exchanges. Results : Our simulations show that although the best fitting model does not always provide the best future volatility estimates the differences are so insignificant that the estimates of the best fitting model can be used with confidence. The empirical application to stock markets also indicates that a non normal error distribution tends to improve the volatility forecast of returns. Conclusion : The volatility forecast estimates of the best fitted model can be reliably used for volatility forecasting. Moreover, the empirical studies demonstrate that a skewed error distribution outperforms other error distributions in terms of out-of-sample volatility forecasting.

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Citation

Kosapattarapim, C., Lin, Y. & McCrae, M. (2012). Evaluating the volatility forecasting performance of best fitting GARCH models in emerging Asian stock markets. International Journal of Mathematics & Statistics, 12 (2), 1-15.

Journal title

International Journal of Mathematics & Statistics

Volume

12

Issue

2

Pagination

1-15

Language

English

RIS ID

52210

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