Comparative analysis on the three popular causality modeling methodologies

IF 0.6 Q4 BUSINESS, FINANCE
Xueyang Shi, Bing-Fen Cheng
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Abstract

The idea of causality has lasted for over thousands of years. Unlike the idea of statistical correlation and regression, performing causal modeling and prediction is an even more challenging job. Under the intervention framework of causality, causal modeling is gaining popularity given the advances of big data and computational ability in recent years. In different scientific research areas, there exist three powerful causal modeling methodologies, namely, the potential outcomes method in statistics, the instrumental variables method in economics and Judea Pearl’s causal diagram method (do-calculus) in computer science and artificial intelligence. In this paper, by linear causal modeling assumption, we prove that the above three causal methodologies are equivalent. That is, given a causal problem, all of the three modeling methods will generate the same causal relationship conclusion, despite that they own different causal inference processes. During the past one-and-half years, the global economy suffers severe impacts from the COVID-19 pandemic. To fight the deadly pandemic, various social distancing measures and actions, taken by the countries, are effective in curbing the impact of the pandemic over the population. However, such social distancing policy has an adverse effect over the global economy growth; if more stringent measures were taken, then there would be suffering in the forms of much slower economic growth and higher unemployment. In this paper, we study the causal relationships between social distancing, fatality rate and economy growth. This work provides a useful tool for the governments to keep balance between controlling the pandemic and maintaining economic growth.
三种流行的因果关系建模方法的比较分析
因果关系的观念已经延续了数千年。与统计相关和回归的想法不同,执行因果建模和预测是一项更具挑战性的工作。在因果关系的干预框架下,近年来随着大数据和计算能力的进步,因果建模越来越受欢迎。在不同的科学研究领域,存在着三种强大的因果建模方法,即统计学中的潜在结果法、经济学中的工具变量法和计算机科学和人工智能中的Judea Pearl的因果图法(do-calculus)。本文通过线性因果建模假设,证明了上述三种因果方法是等价的。也就是说,给定一个因果问题,所有三种建模方法都会得出相同的因果关系结论,尽管它们具有不同的因果推理过程。在过去一年半的时间里,全球经济受到新冠肺炎疫情的严重影响。为抗击这一致命流行病,各国采取的各种保持社会距离措施和行动,有效遏制了疫情对人口的影响。然而,这种社会距离政策对全球经济增长产生了不利影响;如果采取更严格的措施,那么就会出现经济增长大幅放缓和失业率上升的情况。本文研究了社会距离、死亡率和经济增长之间的因果关系。这项工作为各国政府在控制疫情和保持经济增长之间保持平衡提供了有益的工具。
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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