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Estimating the causal effect of measured endogenous variables: A tutorial on experimentally randomized instrumental variables

Sajons, Gwendolin B.. (2020) Estimating the causal effect of measured endogenous variables: A tutorial on experimentally randomized instrumental variables. The Leadership Quarterly, 31 (5). pp. 1-17.

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Official URL: https://edoc.unibas.ch/81666/

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Abstract

Omitted variables create endogeneity and thus bias the estimation of the causal effect of measured variables on outcomes. Such measured variables are ubiquitous and include perceptions, attitudes, emotions, behaviors, and choices. Even experimental studies are not immune to the endogeneity problem. I propose a solution to this challenge: Experimentally randomized instrumental variables (ERIVs), which can correct for endogeneity bias via instrumental variable estimation. Such ERIVs can be generated in laboratory or field settings. Using perceptions as an example of a measured variable, I examine 74 recent articles from two top-tier management journals. The estimation methods commonly used exposed estimates to potential endogeneity bias; yet, authors incorrectly interpreted the estimated coefficients as causal in all cases. Then I demonstrate the mechanics of the ERIV procedure using simulated data and show how researchers can apply this methodology in a real experimental context.
Faculties and Departments:06 Faculty of Business and Economics > Departement Wirtschaftswissenschaften
UniBasel Contributors:Sajons, Gwendolin
Item Type:Article, refereed
Article Subtype:Research Article
Publisher:Elsevier
ISSN:1048-9843
Note:Publication type according to Uni Basel Research Database: Journal article
Last Modified:04 Feb 2021 07:44
Deposited On:04 Feb 2021 07:44

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