离散处理的倾向得分匹配:以北京Pm2.5为例

J. Hou, Shaofei Shen, Jing Han, Siqi Xu, Yijing Liu
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摘要

在因果推理中,倾向评分匹配(PSM)是估计治疗与潜在结果之间因果关系的有效方法。二元治疗的PSM已被广泛应用于医学、经济学和社会学领域,以评估治疗对潜在结局的影响。然而,二元处理是离散处理的一种特殊情况。多层次治疗也是离散治疗的普遍情况。因此,本文将重点研究倾向评分匹配方法的离散处理(从二值到多级)效果估计。在倾向得分匹配的过程中,除了逻辑模型之外,还可以应用更多的其他机器学习模型来估计不同类型处理的倾向得分。本文旨在将机器学习模型与倾向得分匹配相结合,并将其应用于北京pm2.5数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Propensity Score Matching on Discrete Treatment: Beijing Pm2.5 Case Study
Abstract—In causal inference, propensity score matching (PSM) is an effective method to estimate the causal effect between treatment and potential outcomes. The PSM with binary treatment has been widely used in medicine, economics, and sociology fields to evaluate the influence of treatment on the potential outcomes. However, the binary treatment is a special case of discrete treatment. The multi-level treatment is also a universal case of discrete treatment. Therefore, this essay will focus on the discrete treatment (from binary to multi-level) effect estimation by the propensity score matching method. In the procedure of propensity score matching, apart from the logistic model, more other machine learning models can be applied to estimate the propensity score for different types of treatment. This paper aims to combine machine learning models with propensity score matching and apply the methods to the Beijing pm 2.5 dataset.
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