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Causal Inference in Introductory Statistics Courses

Kevin Cummiskey, Bryan Adams, James D. Pleuss, Dusty Turner, Nicholas Clark, Krista Watts

2020Journal of Statistics Education30 citationsDOIOpen Access PDF

Abstract

Over the last two decades, statistics educators have made important changes to introductory courses. Current guidelines emphasize developing statistical thinking in students and exposing them to the entire investigative process in the context of interesting research questions and real data. As a result, many concepts (confounding, multivariable models, study design, etc.) previously reserved only for higher-level courses now appear in introductory courses. Despite these changes, causality is rarely discussed in introductory courses, except for warning students “correlation does not imply causation” or covering the special case of randomized controlled experiments. In this article, we argue causal inference concepts align well with statistics education guidelines for introductory courses by developing statistical and multivariable thinking, exposing students to many aspects of the investigative process, and fostering active learning. We discuss how to integrate causal inference concepts into introductory courses using causal diagrams and provide an illustrative example with youth smoking data. Through our website, we also provide a guided student activity and instructor resources. Supplementary materials for this article are available online.

Topics & Concepts

Causal inferenceStatistical inferenceCausationContext (archaeology)Causality (physics)Statistics educationInferenceStatistical thinkingMathematics educationRandomized experimentProcess (computing)Computer sciencePsychologyData scienceStatisticsArtificial intelligenceMathematicsEpistemologyPhilosophyOperating systemBiologyPhysicsQuantum mechanicsPaleontologyStatistics Education and MethodologiesData Analysis with R