机器学习对经济学的影响

S. Athey
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引用次数: 363

摘要

本文对机器学习对经济学的早期贡献进行了评估,并对其未来的贡献进行了预测。它首先简要概述了机器学习文献中的一些主题,然后与估计反事实政策在经济学中的影响的传统方法进行了一些对比。接下来,我们回顾一下机器学习在经济学中的一些最初的“现成”应用,包括在分析文本和图像方面的应用。然后,我们描述了围绕机器学习在政策问题上的应用而提出的新类型的问题,包括“预测政策问题”,以及对公平性和可操作性的考虑。我们从结合机器学习和因果推理的新兴计量经济学文献中提出了一些亮点。最后,我们概述了关于机器学习对经济学未来影响的一系列更广泛的预测,包括它对合作性质、资金、研究工具和研究问题的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Machine Learning on Economics
This paper provides an assessment of the early contributions of machine learning to economics, as well as predictions about its future contributions. It begins by briefly overviewing some themes from the literature on machine learning, and then draws some contrasts with traditional approaches to estimating the impact of counterfactual policies in economics. Next, we review some of the initial “off-the-shelf” applications of machine learning to economics, including applications in analyzing text and images. We then describe new types of questions that have been posed surrounding the application of machine learning to policy problems, including “prediction policy problems,” as well as considerations of fairness and manipulability. We present some highlights from the emerging econometric literature combining machine learning and causal inference. Finally, we overview a set of broader predictions about the future impact of machine learning on economics, including its impacts on the nature of collaboration, funding, research tools, and research questions.
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