因果效应的计量经济学鉴定:案例研究的图解方法

Sanjay Kallapur
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引用次数: 0

摘要

众所周知,因果推理依赖于不可检验的先验因果假设。识别是指是否可以从观察到的统计关联中推断出因果关系;它需要理解由这些因果假设引起的统计关联。由于这些假设是不可检验的,因此对其统计结果的透明描述有助于读者。然而,因果假设与其诱发的统计关联之间的关系可能并不明显。在本文中,我描述了一种被称为有向非循环图或图形贝叶斯网络或图形因果模型的技术。该技术是在20世纪80年代的计算机科学文献中发展起来的(Pearl 2009),尽管它在Philip和Sewall Wright从20世纪20年代开始开发的路径分析中有先例(Wright 1921)。除了描述该技术之外,我还说明了它在审计研究问题的案例研究中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Econometric Identification of Causal Effects: A Graphical Approach with a Case Study
It is well known that causal inference relies on untestable a-priori causal assumptions. Identification refers to whether a causal relationship can be inferred from observed statistical associations; it requires an understanding of what statistical associations are induced by those causal assumptions. Since the assumptions are untestable, a transparent description of their statistical consequences helps the readers. However, the relation between causal assumptions and their induced statistical associations may not be obvious. In this paper I describe a technique known as Directed Acyclical Graphs or Graphical Bayesian Network or Graphical Causal Models. The technique was developed in the computer science literature in the 1980s (Pearl 2009) although it has antecedents in path analysis developed by Philip and Sewall Wright beginning in the 1920s (Wright 1921). In addition to describing the technique, I illustrate its application to a case study of a research issue in auditing.
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