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A Practical Machine Learning Approach for Dynamic Stock Recommendation

机译:一种实用的动态股票推荐机器学习方法

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Stock recommendation is vital to investment companies and investors. However, no single stock selection strategy will always win while analysts may not have enough time to check all S&P 500 stocks (the Standard & Poor's 500). In this paper, we propose a practical scheme that recommends stocks from S&P 500 using machine learning. Our basic idea is to buy and hold the top 20% stocks dynamically. First, we select representative stock indicators with good explanatory power. Secondly, we take five frequently used machine learning methods, including linear regression, ridge regression, stepwise regression, random forest and generalized boosted regression, to model stock indicators and quarterly log-return in a rolling window. Thirdly, we choose the model with the lowest Mean Square Error in each period to rank stocks. Finally, we test the selected stocks by conducting portfolio allocation methods such as equally weighted, mean-variance, and minimum-variance. Our empirical results show that the proposed scheme outperforms the long-only strategy on the S&P 500 index in terms of Sharpe ratio and cumulative returns.
机译:推荐股票对投资公司和投资者至关重要。但是,当分析师可能没有足够的时间检查所有标准普尔500股(标准普尔500股)时,没有任何一种选股策略会永远获胜。在本文中,我们提出了一个实用的方案,该方案使用机器学习来推荐S&P 500的股票。我们的基本思想是动态购买和持有前20%的股票。首先,我们选择具有良好解释力的代表性股票指标。其次,我们采用了五种常用的机器学习方法,包括线性回归,岭回归,逐步回归,随机森林和广义提升回归,以在滚动窗口中对股票指标和季度对数回报建模。第三,我们选择每个时期均方误差最低的模型对股票进行排名。最后,我们通过进行投资组合分配方法(例如均等加权,均值方差和最小方差)来测试选定的股票。我们的实证结果表明,在夏普比率和累计收益方面,该方案优于标准普尔500指数的长期策略。

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