Tree-based machine learning approaches for equity market predictions

被引:0
作者
Dominik Wolff
Ulrich Neugebauer
机构
[1] Institute for Quantitative Capital Market Research (IQ-KAP),
[2] Deka Investment GmbH,undefined
来源
Journal of Asset Management | 2019年 / 20卷
关键词
Machine learning; Equity return forecasts; Predictive regression; Three-pass regression filter; Random forest; Boosting; G17; G11; C53;
D O I
暂无
中图分类号
学科分类号
摘要
We empirically analyze equity premium predictions with “traditional” linear regression models and tree-based machine learning approaches. Based on a commonly used dataset of equity market predictors extended by additional fundamental, macroeconomic, sentiment and risk indicators, we find mixed results for machine learning algorithms for equity market predictions. In contrast to sophisticated linear regression models such as penalized least squares or principal component regressions, the analyzed machine learning algorithms fail to significantly outperform the historical average benchmark forecast. However, an investment strategy that uses machine learning predictions in a market timing strategy outperforms a passive buy-and-hold investment. Compared to sophisticated linear prediction models, machine learning algorithms do not improve forecast accuracy in our problem set.
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页码:273 / 288
页数:15
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