Identification of Average Treatment Effects in Social Experiments Under Alternative Forms of Attrition
Journal
Journal of Educational and Behavioral Statistics
ISSN
1076-9986
ISSN-Digital
1935-1054
Type
journal article
Date Issued
2012-05
Author(s)
Abstract
As any empirical method used for causal analysis, social experiments are prone to attrition which may flaw the validity of the results. This paper considers the problem of partially missing outcomes in experiments. Firstly, it systematically reveals under which forms of attrition - in terms of its relation to observable and/or unobservable factors - experiments do (not) yield causal parameters. Secondly, it shows how the various forms of attrition can be controlled for by different methods of inverse probability weighting (IPW) that are tailored to the specific missing data problem at hand. In particular, it discusses IPW methods that incorporate instrumental variables when attrition is related to unobservables, which has been widely ignored in the experimental literature before
Language
English
Keywords
Experiments
attrition
inverse probability weighting.
HSG Classification
contribution to scientific community
Refereed
Yes
Publisher
SAGE Publications USA
Publisher place
Thousand Oaks, CA 91320/USA
Volume
37
Number
3
Start page
443
End page
474
Pages
32
Subject(s)
Division(s)
Eprints ID
69241
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