Does Measurement Error Matter in Volatility Forecasting? Empirical Evidence from the Chinese Stock Market

Peer Reviewed
22 July 2020

Yajing Wang, Fang Liang, Tianyi Wang, Zhuo Huang

Based on methods developed by Bollerslev et al. (2016), we explicitly accounted for the heteroskedasticity in the measurement errors and for the high volatility of Chinese stock prices; we proposed a new model, the LogHARQ model, as a way to appropriately forecast the realized volatility of the Chinese stock market. Out-of-sample findings suggest that the LogHARQ model performs better than existing logarithmic and linear forecast models, particularly when the realized quarticity is large. The better performance is also confirmed by the utility based economic value test through volatility timing.

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Publication | 2 April 2021