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Empirical Evidence of the Leverage Effect in a Stochastic Volatility Model: A Realized Volatility Approach 被引量:2

Empirical Evidence of the Leverage Effect in a Stochastic Volatility Model: A Realized Volatility Approach
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摘要 Increasing attention has been focused on the analysis of the realized volatil- ity, which can be treated as a proxy for the true volatility. In this paper, we study the potential use of the realized volatility as a proxy in a stochastic volatility model estimation. We estimate the leveraged stochastic volatility model using the realized volatility computed from five popular methods across six sampling-frequency transaction data (from 1-min to 60- min) based on the trust region method. Availability of the realized volatility allows us to estimate the model parameters via the MLE and thus avoids computational challenge in the high dimensional integration. Six stock indices are considered in the empirical investigation. We discover some consistent findings and interesting patterns from the empirical results. In general, the significant leverage effect is consistently detected at each sampling frequency and the volatility persistence becomes weaker at the lower sampling frequency. Increasing attention has been focused on the analysis of the realized volatil- ity, which can be treated as a proxy for the true volatility. In this paper, we study the potential use of the realized volatility as a proxy in a stochastic volatility model estimation. We estimate the leveraged stochastic volatility model using the realized volatility computed from five popular methods across six sampling-frequency transaction data (from 1-min to 60- min) based on the trust region method. Availability of the realized volatility allows us to estimate the model parameters via the MLE and thus avoids computational challenge in the high dimensional integration. Six stock indices are considered in the empirical investigation. We discover some consistent findings and interesting patterns from the empirical results. In general, the significant leverage effect is consistently detected at each sampling frequency and the volatility persistence becomes weaker at the lower sampling frequency.
出处 《Frontiers of Economics in China-Selected Publications from Chinese Universities》 2012年第1期22-43,共22页 中国高等学校学术文摘·经济学(英文版)
关键词 realized volatility stochastic volatility model leverage effect high frequency data MLE trust-region method realized volatility, stochastic volatility model, leverage effect, high frequency data, MLE, trust-region method
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参考文献31

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