机器能从行为偏差中学习吗?深度学习模型的股票回报预测性证据

IF 4.3 2区 经济学 Q1 BUSINESS, FINANCE Journal of Behavioral and Experimental Finance Pub Date : 2023-12-13 DOI:10.1016/j.jbef.2023.100881
Suk-Joon Byun , Sangheum Cho , Da-Hea Kim
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引用次数: 0

摘要

我们研究了深度学习模型的收益预测能力如何随股票易受投资者行为偏差影响而变化。利用大量异常变量,我们发现,买入(做空)深度学习信号较高(较低)的股票的多空策略为更易受行为偏差影响的股票(即规模小、年轻、无利可图、波动大、不派息、接近违约和类似彩票的股票)带来了更高的收益。当投资者情绪高涨时,当新信息通过收益公告传递时,深度学习模型在投机性股票上的这种表现就会变得非常明显。此外,我们的非线性深度学习信号与分析师的盈利预测误差呈负相关,尤其是对投机性股票而言,这意味着分析师对深度学习信号较高的投机性股票的预测过低。这些结果表明,具有非线性结构的深度学习模型有助于捕捉由行为偏差引起的错误定价。
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Can a machine learn from behavioral biases? Evidence from stock return predictability of deep learning models

We examine how the return predictability of deep learning models varies with stocks’ vulnerability to investors’ behavioral biases. Using an extensive list of anomaly variables, we find that the long-short strategy of buying (shorting) stocks with high (low) deep learning signals generates greater returns for stocks more vulnerable to behavioral biases, i.e., small, young, unprofitable, volatile, non-dividend-paying, close-to-default, and lottery-like stocks. This performance of deep learning models for speculative stocks becomes pronounced when investor sentiment is high, and when new information is delivered through earnings announcements. Moreover, our nonlinear deep learning signals are negatively associated with analysts’ earnings forecast error especially for speculative stocks, implying that analysts’ forecasts are too low for speculative stocks with high deep learning signals. These results suggest that deep learning models with nonlinear structures are useful for capturing mispricing induced by behavioral biases.

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来源期刊
CiteScore
13.20
自引率
6.10%
发文量
75
审稿时长
69 days
期刊介绍: Behavioral and Experimental Finance represent lenses and approaches through which we can view financial decision-making. The aim of the journal is to publish high quality research in all fields of finance, where such research is carried out with a behavioral perspective and / or is carried out via experimental methods. It is open to but not limited to papers which cover investigations of biases, the role of various neurological markers in financial decision making, national and organizational culture as it impacts financial decision making, sentiment and asset pricing, the design and implementation of experiments to investigate financial decision making and trading, methodological experiments, and natural experiments. Journal of Behavioral and Experimental Finance welcomes full-length and short letter papers in the area of behavioral finance and experimental finance. The focus is on rapid dissemination of high-impact research in these areas.
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