A Novel Multivariate Volatility Modeling for Risk Management in Stock Markets

被引:0
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作者
Zi-Kai Wei
Ka-Fai Cedric Yiu
Heung Wong
Kit-Yan Chan
机构
[1] The Hong Kong Polytechnic University,Department of Applied Mathematics
[2] Curtin University,Department of Electrical and Computer Engineering
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关键词
Multivariate volatility models; Risk management to future markets; Generalized autoregressive conditional heteroscedastic modeling; Model averaging techniques;
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摘要
Volatility modeling is crucial for risk management and asset allocation; this is an influential area in financial econometrics. The central requirement of volatility modeling is to be able to forecast volatility accurately. The literature review of volatility modeling shows that the approaches of model averaging estimation are commonly used to reduce model uncertainty in order to achieve a satisfactory forecasting reliability. However, those approaches attempt to forecast more reliable volatilities by integrating all forecasting outcomes equally from several volatility models. Forecasting patterns generated by each model may be similar. This may cause redundant computation without improving forecasting reliability. The proposed multivariate volatility modeling method which is called the fuzzy-method-involving multivariate volatility model (abbreviated as FMVM) classifies the individual models into smaller scale clusters and selects the most representative model in each cluster. Hence, repetitive but unnecessary computational burden can be reduced, and forecasting patterns from representative models can be integrated. The proposed FMVM is benchmarked against existing multivariate volatility models on forecasting volatilities of Hong Kong Hang Seng Index constituent stocks. Numerical results show that it can obtain relatively lower forecasting errors with less model complexity.
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页码:116 / 127
页数:11
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