Predicting Returns with Machine Learning across Horizons, Firm Size, and Time

Nusret Cakici, Christian Fieberg, Daniel Metko, Adam Zaremba
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Abstract

Researchers and practitioners hope that machine learning strategies will deliver better performance than traditional methods. But do they? This study documents that stock return predictability with machine learning depends critically on three dimensions: forecast horizon, firm size, and time. It works well for short-term returns, small firms, and early historical data; however, it disappoints in opposite cases. Consequently, annual return forecasts have failed to produce substantial economic gains within most of the US market in the past two decades. These findings challenge the practical utility of predicting returns with machine learning models.
用机器学习预测跨越视野、公司规模和时间的回报
研究人员和从业者希望机器学习策略能够提供比传统方法更好的性能。但真的是这样吗?该研究证明,机器学习的股票回报可预测性主要取决于三个维度:预测范围、公司规模和时间。它适用于短期回报、小公司和早期历史数据;然而,在相反的情况下,它令人失望。因此,在过去20年里,在美国大部分市场,年度回报预测未能带来实质性的经济收益。这些发现挑战了用机器学习模型预测回报的实际效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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