A Composite Four-Factor Model in China

31 Pages Posted: 27 Sep 2023

See all articles by Xiangbin Lian

Xiangbin Lian

Shenzhen China-Europe Rabbit Fund Management Co.,Ltd

Chuan Shi

Beijing Liangxin Investment Management Co. Ltd.

Date Written: September 21, 2021

Abstract

We investigate investors’ overreaction and underreaction and their implications to asset pricing in China stock market. The study first picks anomaly variables representing investors’ overreaction and underreaction and then measures these two effects quantitatively. Both of them deliver significant excess returns, both statistically and economically, in China stock market. We then equip these two effects with the market and the size factor to construct a composite four-factor model and study how they price other assets. Extensive empirical analysis shows that this new model is suitable for China stock market. The maximum annual Sharpe ratio spanned by the four factors is 2.02, which is one time higher than those spanned by similar models such as Stambaugh and Yuan (2017) and Daniel, Hirshleifer and Sun (2020). In addition, using 149 anomaly candidates as test assets, the composite four-factor model exhibit good pricing capability, as there is only one test asset whose abnormal return given the model exceeds the 3.0 t-statistic threshold.

Keywords: behavioral finance, asset pricing, factor models, cross-section of stock returns, China

JEL Classification: G12, G14, G15

Suggested Citation

Lian, Xiangbin and Shi, Chuan, A Composite Four-Factor Model in China (September 21, 2021). Available at SSRN: https://ssrn.com/abstract=3928587 or http://dx.doi.org/10.2139/ssrn.3928587

Xiangbin Lian

Shenzhen China-Europe Rabbit Fund Management Co.,Ltd ( email )

Shen Zhen, China

Chuan Shi (Contact Author)

Beijing Liangxin Investment Management Co. Ltd. ( email )

Beijing
China

HOME PAGE: http://www.liang-xin.com

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