Factor Investing with Classification-Based Supervised Machine Learning

IF 0.6 Q4 BUSINESS, FINANCE
Edward N. W. Aw, Joshua Jiang, John Q. Jiang
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引用次数: 0

Abstract

There are two types of supervised machine learning (SML): regression and classification. In this study, the authors propose classification-based machine learning algorithms for factor investing with artificial neural networks in which the cross section of stock returns is grouped into five categories: strong buy, buy, neutral, sell, and strong sell. Their empirical out-of-sample results demonstrate some advantages of classification-based machine learning relative to regression-based learning in which the actual stock returns denote the response variable. The classification-based models also deliver slight outperformance relative to the ordinary least squares model, although the outperformance is not statistically significant. Furthermore, the out-of-sample results show that “deep” learning with multilayers of neuron layers cannot outperform a less sophisticated “shallow” learning for both classification-based and regression-based SML algorithms. Their findings suggest that market noise, common in the financial markets, during the training process overwhelms the nonlinear association uncovered in the machine learning process; and the classification of the cross section of stock returns may have reduced some of the noise.
基于分类的监督机器学习的因子投资
有两种类型的监督机器学习(SML):回归和分类。在这项研究中,作者提出了基于分类的机器学习算法,用于人工神经网络的因素投资,其中股票回报的横截面分为五类:强买、买、中性、卖和强卖。他们的经验样本外结果证明了基于分类的机器学习相对于基于回归的学习的一些优势,在基于回归的学习中,实际股票收益表示响应变量。相对于普通的最小二乘模型,基于分类的模型也提供了轻微的性能优势,尽管这种优势在统计上并不显著。此外,样本外结果表明,对于基于分类和基于回归的SML算法,具有多层神经元层的“深度”学习不能胜过不太复杂的“浅”学习。他们的研究结果表明,在训练过程中,金融市场中常见的市场噪音压倒了机器学习过程中发现的非线性关联;对股票收益横截面的分类可能减少了一些噪音。
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来源期刊
Journal of Investing
Journal of Investing BUSINESS, FINANCE-
CiteScore
1.10
自引率
16.70%
发文量
42
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