Forecasting Performance of Asymmetric GARCH Stock Market Volatility Models

Ho-jin Lee
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引用次数: 13

Abstract

We investigate the asymmetry between positive and negative returns in their effect on conditional variance of the stock market index and incorporate the characteristics to form an out-of-sample volatility forecast. Contrary to prior evidence, however, the results in this paper suggest that no asymmetric GARCH model is superior to basic GARCH(1,1) model. It is our prior knowledge that, for equity returns, it is unlikely that positive and negative shocks have the same impact on the volatility. In order to reflect this intuition, we implement three diagnostic tests for volatility models: the Sign Bias Test, the Negative Size Bias Test, and the Positive Size Bias Test and the tests against the alternatives of QGARCH and GJR-GARCH. The asymmetry test results indicate that the sign and the size of the unexpected return shock do not influence current volatility differently which contradicts our presumption that there are asymmetric effects in the stock market volatility. This result is in line with various diagnostic tests which are designed to determine whether the GARCH(1,1) volatility estimates adequately represent the data. The diagnostic tests in section 2 indicate that the GARCH(1,1) model for weekly KOSPI returns is robust to the misspecification test. We also investigate two representative asymmetric GARCH models, QGARCH and GJR-GARCH model, for our out-of-sample forecasting performance. The out-of-sample forecasting ability test reveals that no single model is clearly outperforming. It is seen that the GJR-GARCH and QGARCH model give mixed results in forecasting ability on all four criteria across all forecast horizons considered. Also, the predictive accuracy test of Diebold and Mariano based on both absolute and squared prediction errors suggest that the forecasts from the linear and asymmetric GARCH models need not be significantly different from each other.
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非对称GARCH股票市场波动率模型的预测性能
我们研究了正收益和负收益之间的不对称性对股票市场指数条件方差的影响,并结合这些特征来形成样本外波动率预测。然而,与先前的证据相反,本文的结果表明,不对称GARCH模型并不优于基本GARCH(1,1)模型。我们的先验知识是,对于股票回报,正面和负面冲击不太可能对波动性产生相同的影响。为了反映这种直觉,我们对波动率模型实施了三种诊断测试:符号偏差测试、负规模偏差测试和正规模偏差测试,以及针对QGARCH和GJR-GARCH替代方案的测试。非对称检验结果表明,非预期收益冲击的符号和大小对当前波动的影响不存在差异,这与我们假设股票市场波动存在不对称效应的假设相矛盾。这一结果与各种诊断测试一致,这些测试旨在确定GARCH(1,1)波动率估计是否充分代表数据。在第2节的诊断测试表明,GARCH(1,1)模型的每周KOSPI回报是稳健的错误规范测试。我们还研究了两个具有代表性的非对称GARCH模型,QGARCH和GJR-GARCH模型,对我们的样本外预测性能进行了研究。样本外预测能力测试表明,没有一个模型明显优于其他模型。可以看出,GJR-GARCH和QGARCH模型在所有考虑的预测范围内对所有四个标准的预测能力给出了混合结果。此外,Diebold和Mariano基于绝对和平方预测误差的预测精度检验表明,线性和非对称GARCH模型的预测并不需要显著差异。
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Forecasting Performance of Asymmetric GARCH Stock Market Volatility Models
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