Variable Selection in Seemingly Unrelated Regressions with Random Predictors
classification
📊 stat.ME
keywords
selectionmodelpredictorsapplicationapproachassetconsidersdecouples
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This paper considers linear model selection when the response is vector-valued and the predictors are randomly observed. We propose a new approach that decouples statistical inference from the selection step in a "post-inference model summarization" strategy. We study the impact of predictor uncertainty on the model selection procedure. The method is demonstrated through an application to asset pricing.
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