Tackling the omitted variables problem without the strong assumptions of proxies

Tackling the omitted variables problem without the strong assumptions of proxies

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Article ID: iaor2009714
Country: Netherlands
Volume: 178
Issue: 3
Start Page Number: 819
End Page Number: 840
Publication Date: May 2007
Journal: European Journal of Operational Research
Authors: ,
Abstract:

Omitted variables that interact with included independent variables change the vertical placement of observations. Thus, by projecting the data to an output oriented VRS DEA frontier, the influence of omitted variables can be eliminated. After this is done once, the efficient observations can be eliminated and the process repeated. Each subsequent iteration shows the relationship between the dependant and known independent variable for progressively less favorable omitted variables. Building on these ideas, we introduce a new analytical technique named ‘Reiterative Truncated Projected Least Squares’ (RTPLS). We provide both a theoretical argument and simulation evidence that RTPLS produces less bias than ordinary least squares (OLS) when there are omitted variables that interact with the included variables.

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