Why We Should Teach Causal Inference: Examples in Linear Regression With Simulated Data

IF 2.2 Q3 Social Sciences Journal of Statistics Education Pub Date : 2020-05-03 DOI:10.1080/10691898.2020.1752859
Karsten Lübke, Matthias Gehrke, Jörg Horst, G. Szepannek
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引用次数: 20

Abstract

Abstract Basic knowledge of ideas of causal inference can help students to think beyond data, that is, to think more clearly about the data generating process. Especially for (maybe big) observational data, qualitative assumptions are important for the conclusions drawn and interpretation of the quantitative results. Concepts of causal inference can also help to overcome the mantra “Correlation does not imply Causation.” To motivate and introduce causal inference in introductory statistics or data science courses, we use simulated data and simple linear regression to show the effects of confounding and when one should or should not adjust for covariables.
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为什么我们应该教授因果推断:用模拟数据进行线性回归的例子
摘要因果推理思想的基础知识可以帮助学生超越数据进行思考,即更清楚地思考数据生成过程。特别是对于(可能是大的)观测数据,定性假设对于得出结论和解释定量结果很重要。因果推断的概念也有助于克服“相关性并不意味着因果关系”的咒语。为了在统计学导论或数据科学课程中激励和引入因果推断,我们使用模拟数据和简单的线性回归来显示混淆的影响,以及何时应该或不应该调整协变量。
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来源期刊
Journal of Statistics Education
Journal of Statistics Education EDUCATION, SCIENTIFIC DISCIPLINES-
CiteScore
1.20
自引率
0.00%
发文量
0
审稿时长
12 weeks
期刊介绍: The "Datasets and Stories" department of the Journal of Statistics Education provides a forum for exchanging interesting datasets and discussing ways they can be used effectively in teaching statistics. This section of JSE is described fully in the article "Datasets and Stories: Introduction and Guidelines" by Robin H. Lock and Tim Arnold (1993). The Journal of Statistics Education maintains a Data Archive that contains the datasets described in "Datasets and Stories" articles, as well as additional datasets useful to statistics teachers. Lock and Arnold (1993) describe several criteria that will be considered before datasets are placed in the JSE Data Archive.
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