Split Decisions: Practical Machine Learning for Empirical Legal Scholarship

J. Chen
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Abstract

Multivariable regression may be the most prevalent and useful task in social science. Empirical legal studies rely heavily on the ordinary least squares method. Conventional regression methods have attained credibility in court, but by no means do they dictate legal outcomes. Using the iconic Boston housing study as a source of price data, this Article introduces machine-learning regression methods. Although decision trees and forest ensembles lack the overt interpretability of linear regression, these methods reduce the opacity of black-box techniques by scoring the relative importance of dataset features. This Article will also address the theoretical tradeoff between bias and variance, as well as the importance of training, cross-validation, and reserving a holdout dataset for testing.
分裂决策:实证法律学术的实用机器学习
多变量回归可能是社会科学中最普遍和最有用的任务。实证法律研究在很大程度上依赖于普通的最小二乘法。传统的回归方法在法庭上获得了可信度,但绝不能决定法律结果。本文使用标志性的波士顿住房研究作为价格数据的来源,介绍了机器学习回归方法。虽然决策树和森林集合缺乏线性回归的明显可解释性,但这些方法通过对数据集特征的相对重要性进行评分,减少了黑盒技术的不透明性。本文还将讨论偏差和方差之间的理论权衡,以及训练、交叉验证和保留保留数据集用于测试的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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