计量经济学家的机器学习:自述手册

Marcos Lopez de Prado
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引用次数: 1

摘要

金融研究领域最近最令人兴奋的发展之一,是几年前不存在的新的行政、私营部门和微观层面的数据集的可用性。许多这些观察的非结构化性质,以及它们测量的现象的复杂性,意味着许多这些数据集超出了计量经济学分析的掌握范围。机器学习(ML)技术提供了在高维空间中识别复杂模式所需的数值能力和功能灵活性。然而,与计量经济学方法的透明度相比,机器学习通常被视为一个黑盒子。在本文中,作者论证了计量经济学过程的每个分析步骤在机器学习分析中都有一个相应的步骤。通过清楚地说明这种对应关系,作者的目标是促进和协调计量经济学家对ML技术的采用。
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 Econometricians: The Readme Manual
One of the most exciting recent developments in financial research is the availability of new administrative, private sector, and micro-level datasets that did not exist a few years ago. The unstructured nature of many of these observations, along with the complexity of the phenomena they measure, means that many of these datasets are beyond the grasp of econometric analysis. Machine learning (ML) techniques offer the numerical power and functional flexibility needed to identify complex patterns in a high-dimensional space. ML is often perceived as a black box, however, in contrast to the transparency of econometric approaches. In this article, the author demonstrates that each analytical step of the econometric process has a homologous step in ML analyses. By clearly stating this correspondence, the author’s goal is to facilitate and reconcile the adoption of ML techniques among econometricians.
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