Empirical Analysis of Multi-factor Stock Selection Model Based on Weight Assignment of Momentum and Discrete Degree
DOI:
https://doi.org/10.54691/bcpbm.v19i.737Keywords:
Momentum, Discrete degree, Dynamic weighting, Multi-factor stock selection, Quantitative investmentAbstract
Through the stock selection of a large number of literature, we found that factors contribute differently at different market styles or stages, and the factor weight is different. Therefore, in this paper, the factors were preliminarily screened by IC mean and IR equal weight scoring method and T test, and then the screened factors were tested by correlation test and sorting method to obtain the final factors. After five methods, such as factor equal weight, momentum and dispersion comprehensive average weight, were tested and compared, we found that the method of momentum and dispersion comprehensive average weight on the effect of the stock selection is more excellent than other methods, so we chose the momentum and discrete degree of comprehensive weighted average approach to dynamic weighting of each stock, the last stock through empowerment scoring method selection. In this way, the speed of market change and the impact of industry on factors are better considered, and the te-test effect is better.
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References
STEPTHEN A R. The arbitrage theory of capital asset pricing [J]. Journal of Economic Theory, 1976, 13: 341-360.
EUGENE F F, KENNETH R F. The cross-section of expected returns on stock returns [J]. Journal of Finance, 1992, 47:427-465.
CARHART M M. On Persistence in Mutual Fund Performance [J]. Journal of Finance, 1997, 52(3): 57-82.
FAMA E F, FRENCH K R. A five-factor asset pricing model [J]. Jouranl of Financial Economics, 2014, 116(1): 1-22.
Liang Xiaoying. Research on quantitative stock selection method based on multi-factor model [J]. China Market, 2021(25): 31-32. DOI:10.13939/j.cnki.zgsc.2021.25.031.
Lu Kai-chen, Yan Hong-fei, Chen Chong. Research on quantitative investment strategy based on CSI 300 stocks [J]. Journal of Guangxi Normal University (Natural Science Edition), 2019, 37(1); 1-12.
Yue Shu-ning, Shao Bo, Wang Jian. Research on the selection and weighting of model factors of multi-factor scoring method based on FP-Growth association rule algorithm [J]. Modern Marketing (Business Edition), 2020(03): 88-89. DOI:10.19921/j.cnki.1009-2994.2020.03.055.
Gao Zhiqiang. Multi-factor quantitative stock selection and empirical research based on A-share market [D]. Xiamen University, 2017.
Dong Xiaobo, Chang Yuqi. Multi-factor quantitative stock selection model and performance analysis based on factor IC [J]. Journal of Changchun University of Science and Technology (Social Sciences Edition),2019,32(06):82-87.
Liu Jiaqi, Zhang Jian. Multi-factor stock selection model based on machine learning [J]. Times Finance, 2020(17): 99-103.