基于XGboost机器学习算法的动态加权多因素选股策略

Liao Jidong, Zhang Ran
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引用次数: 29

摘要

树提升是一种高效且应用广泛的机器学习方法。构造了基于XGBoost模型的动态加权多因素选股策略。采用XGboost机器学习方法预测因子的IC系数。反测结果表明,动态赋权策略的性能优于等赋权策略和集成电路赋权策略。实证结果证明,XGBoost模型对IC系数的预测是有效的,基于XGBoost模型的动态加权可以提高多因素选股策略的绩效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Weighting Multi Factor Stock Selection Strategy Based on XGboost Machine Learning Algorithm
Tree boosting is a highly effective and widely used machine learning method. A dynamic weighting multi-factor stock selection strategy based on XGBoost model is constructed. XGboost machine learning method is used to predict the IC coefficients of factors. The results of back testing show that the performance of dynamic weighting strategy is superior to the equal weighting strategy and IC weighting strategy. The empirical results prove that XGBoost model is effective in predicting IC coefficients and the dynamic weighting based on XGBoost model can improve the performance of multi-factor stock selection strategy.
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