管理研究中模式发现的机器学习

P. Choudhury, Ryan T. Allen, Michael G. Endres
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引用次数: 53

摘要

监督机器学习(ML)方法是在定量数据中发现鲁棒模式的强大工具。ML识别的模式可用于探索性归纳或溯因研究,或用于回归结果的事后分析,以检测可能未被注意到的模式。然而,机器学习模型不应被视为演绎因果检验的结果。为了演示机器学习在模式发现中的应用,我们实现了机器学习算法来研究一家大型科技公司的员工流动率。我们使用部分依赖图来解释变量之间的关系,这揭示了变量之间令人惊讶的非线性和相互依赖的模式,这些模式可能使用传统方法无法注意到。为了指导读者评估机器学习的模式发现,我们提供了评估模型性能的指导,强调了过程中的人为决策,并警告了常见的误解陷阱。在线附录提供了实现本文所演示算法的代码和数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning for Pattern Discovery in Management Research
Supervised machine learning (ML) methods are a powerful toolkit for discovering robust patterns in quantitative data. The patterns identified by ML could be used for exploratory inductive or abductive research, or for post-hoc analysis of regression results to detect patterns that may have gone unnoticed. However, ML models should not be treated as the result of a deductive causal test. To demonstrate the application of ML for pattern discovery, we implement ML algorithms to study employee turnover at a large technology company. We interpret the relationships between variables using partial dependence plots, which uncover surprising nonlinear and interdependent patterns between variables that may have gone unnoticed using traditional methods. To guide readers evaluating ML for pattern discovery, we provide guidance for evaluating model performance, highlight human decisions in the process, and warn of common misinterpretation pitfalls. An online appendix provides code and data to implement the algorithms demonstrated in the paper.
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