Machine learning and the prediction of changes in profitability

成果类型:
Article
署名作者:
Jones, Stewart; Moser, William J.; Wieland, Matthew M.
署名单位:
University of Sydney; University System of Ohio; Miami University; University System of Ohio; Miami University
刊物名称:
CONTEMPORARY ACCOUNTING RESEARCH
ISSN/ISSBN:
0823-9150
DOI:
10.1111/1911-3846.12888
发表日期:
2023
页码:
2643-2672
关键词:
IMPLIED COST time-series INFORMATION winners return
摘要:
This study uses machine-learning methods to predict next-period change in profitability based on a model proposed by Penman and Zhang (2004, Working paper, Columbia University and University of California, Berkeley; PZ). We find that new machine-learning methods predict out of sample substantially better than traditional regression methods and provide richer interpretations about the role and impact of different predictor variables through their nonlinear relationships and interaction effects. For example, our results contrast with previous research by showing that both components of the DuPont decomposition (change in profit margin and change in asset turnover) are informative of next-period changes in profitability. Our results are robust across different performance metrics, alternative machine-learning models, and software. Furthermore, an unconstrained machine-learning model using a larger feature space could not significantly improve the performance of the PZ model. PZ variables alone accounted for most of the explanatory power of the unconstrained model, suggesting the PZ model is both well specified (in terms of feature selection) and robust in higher dimensional settings. With respect to the economic significance of this information, we find mixed results. The market appears to adjust its expectations more in line with the machine-learning predictions relative to the PZ model but the portfolio returns are not significantly different.
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