Multi Factor Quantitative Stock and Transaction Timing Selection Model Based on Information Coefficient Mean Value Scoring

Yiting Zheng, Wei Nai, Y.T. Ren
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Abstract

With the continuous development of automation and computer technology, information tools with high computational ability has been widely employed in stock transaction industry. Moreover, due to the subjective influence of people and the unstable return of traditional investment, more and more institutions gradually start to use the quantitative stock selection model in order to get higher return in pursuit of lower risk. As the most classic algorithm in quantitative stock selection, multi factor model is favored by many institutional investors. However, due to the difference of financial system between China and western countries, the existing quantitative model in western countries is not fully applicable in China. At the same time, the previous multi factor stock selection models have more subjective factors and less consideration of time series, so the earning rate is usually not so good. In order to pursue a higher earning rate, in this paper, by taking the impact of time series into consideration, a multi factor quantitative stock and transaction timing selection model has been proposed based on information coefficient (IC) mean value scoring. And by choosing constituent stocks in Shanghai and Shenzhen 300 (HS300) Stock Index have been chosen as the target, the effectiveness of proposed model has been analyzed and verified.
基于信息系数均值评分的多因素定量股票与交易时机选择模型
随着自动化和计算机技术的不断发展,具有高计算能力的信息工具在股票交易行业得到了广泛的应用。此外,由于人们的主观影响和传统投资收益的不稳定性,越来越多的机构逐渐开始使用量化选股模型,以追求更低的风险获得更高的收益。多因素模型作为定量选股中最经典的算法,受到众多机构投资者的青睐。但是,由于中西方金融制度的差异,西方现有的量化模型在中国并不完全适用。同时,以往的多因素选股模型主观因素较多,对时间序列的考虑较少,因此收益率往往不太理想。为了追求更高的收益率,本文考虑到时间序列的影响,提出了一种基于信息系数均值评分的多因素定量股票交易时机选择模型。并以沪深300指数成分股(HS300)为研究对象,对所提模型的有效性进行了分析和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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