Optimal Two-Step Prediction in Regression
classification
📊 stat.ME
math.STstat.TH
keywords
computationallypredictionschemeselectionvariablealternativecalibratedcalibration
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High-dimensional prediction typically comprises two steps: variable selection and subsequent least-squares refitting on the selected variables. However, the standard variable selection procedures, such as the lasso, hinge on tuning parameters that need to be calibrated. Cross-validation, the most popular calibration scheme, is computationally costly and lacks finite sample guarantees. In this paper, we introduce an alternative scheme, easy to implement and both computationally and theoretically efficient.
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