基于分组的AdaBoost要素投资方法

Yujie Ding, Wenting Tu, Chuan Qin, Jun Chang
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引用次数: 0

摘要

构建基于上百个候选因子的定量因子投资策略是一个关键的挑战。现有的线性模型没有考虑非线性和变量相互作用,而复杂的机器学习模型很容易过拟合。本文在实证资产定价中的投资组合排序方法的启发下,通过对现有的AdaBoost方法进行改进,提出了一种基于分组的AdaBoost方法。它将金融领域的经验引入算法设计中,以提高基于机器学习的因子投资策略的性能和泛化。该方法限制了因子只能预测同一组收益的共同部分,并允许因子与收益之间存在潜在的非线性关系。此外,为了提高模型对高相关因子的使用能力,我们将单分组AdaBoost扩展为多分组。在中国a股市场上的实验证明了我们的方法在股票业绩分类和投资组合选择方面的有效性,并为本文方法的推广提供了直观的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A grouping-based AdaBoost method for factor investing
Constructing a quantitative factor investment strategy based on hundreds of candidate factors is a critical challenge. Existing linear models do not account for nonlinearities and variable interactions, while complex machine learning models are easily overfitting. In this paper, motivated by the portfolio sorts methods in empirical asset pricing, we propose an alternative approach called grouping-based AdaBoost by adapting the existing AdaBoost. It introduces the experience of the financial field into the algorithm design to improve the performance and generalization of machine learning-based factor investing strategies. The proposed method restricts the factor to only predict the common part of the returns of the same groups and allows the potential nonlinear relationship between a factor and the return. Moreover, to enhance the model's ability to use factors with high correlation, we extend the single-grouping AdaBoost in a multi-grouping way. Experiments on the Chinese A-share market demonstrate the effectiveness of our approach in both stock performance classification and portfolio selection and provide intuitive evidence for the generalization of the proposed method.
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