从潜在结果的角度进行基于回归的因果分析。

Q3 Mathematics
Journal of Econometric Methods Pub Date : 2020-01-01 Epub Date: 2019-06-20 DOI:10.1515/jem-2018-0030
Joseph V Terza
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引用次数: 0

摘要

大多数经济实证研究的目标是提供科学证据,以便根据相关的反事实来评估感兴趣的因果关系。在这种情况下,回归方法的应用无处不在。以此为动机,我们详细介绍了一个基于回归的潜在结果综合框架,用于因果建模、估计和推断。该框架有助于严格规范所关注的效应参数,并明确在潜在结果设置中对其进行适当定义时的因果解释意义。它还有助于明确确定效应参数和基本回归参数的条件。本文讨论了效应参数的一致样本模拟估计器。将这一框架与通常实施和常规应用的建模和估算规程的风格化版本并列,可以发现后者在识别和充分考虑识别相关效应参数和估算结果的因果可解释性所需的条件方面存在不足。在一个例子中,我们展示了这个用于回归建模的一般潜在结果框架的概念优势,说明它如何解决了传统方法在描述和补救遗漏变量偏差方面的根本缺陷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regression-Based Causal Analysis from the Potential Outcomes Perspective.

Most empirical economic research is conducted with the goal of providing scientific evidence that will be informative in assessing causal relationships of interest based on relevant counterfactuals. The implementation of regression methods in this context is ubiquitous. With this as motivation, we detail a comprehensive regression-based potential outcomes framework for causal modeling, estimation and inference. This framework facilitates rigorous specification of the effect parameter of interest and makes clear the sense in which it is causally interpretable, when appropriately defined in a potential outcomes setting. It also serves to crystallize the conditions under which the effect parameter and the underlying regression parameters are identified. The consistent sample analog estimator of the effect parameter is discussed. Juxtaposing this framework with a stylized version of a commonly implemented and routinely applied modeling and estimation protocol reveals how the latter is deficient in recognizing, and fully accounting for, conditions required for identification of the relevant effect parameter and the causal interpretability of estimation results. In the context of an example, we demonstrate the conceptual advantages of this general potential outcomes framework for regression modeling by showing how it resolves fundamental shortcomings in the conventional approach to characterizing and remedying omitted variable bias.

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来源期刊
Journal of Econometric Methods
Journal of Econometric Methods Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.20
自引率
0.00%
发文量
7
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