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Can Machine Learning Unlock the Continuous Alpha? Empirical Study Based on China A-Share Market

机译:机器学习可以解锁连续的alpha吗? 基于中国A股市场的实证研究

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With the development of fintech and artificial intelligence, machine learning algorithms are widely used in quantitative investment. Based on the listed companies in China A-share market from February 2005 to July 2020, quantitative stock selection models with machine learning algorithms are established to obtain continuous alpha returns. The results show that machine learning algorithms can effectively identify the relationship between factors and returns and then improve the performance of the quantitative stock selection model. China A-share market is a weak-form efficient market. By mining the factors that are not fully digested by the market, continuous alpha returns can be obtained. The ensemble algorithms represented by the extremely randomized tree (ET) and light gradient boosting machine (LGBM) perform best in stock market prediction.
机译:随着Fintech和人工智能的发展,机器学习算法广泛用于定量投资。 基于2005年2月至7月2020年7月在中国的上市公司,建立了具有机器学习算法的定量股票选择模型,以获得连续的alpha回报。 结果表明,机器学习算法可以有效地识别因素和回报之间的关系,然后提高定量股票选择模型的性能。 中国A股市场是一个弱势效率的市场。 通过采矿不完全消化市场的因素,可以获得连续的alpha返回。 由极其随机树(ET)和轻梯度升压机(LGBM)表示的集合算法在股票市场预测中表现最佳。

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