Selective inference after likelihood- or test-based model selection in linear models
classification
📊 stat.ME
stat.AP
keywords
inferenceselectionmodellikelihood-linearmodelsselectivetest-based
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Statistical inference after model selection requires an inference framework that takes the selection into account in order to be valid. Following recent work on selective inference, we derive analytical expressions for inference after likelihood- or test-based model selection for linear models.
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