Regularization parameter selection in indirect regression by residual based bootstrap
classification
📊 stat.ME
math.STstat.TH
keywords
indirectregressionbootstrapestimatorfunctionmethodologyparameterregularization
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Residual-based analysis is generally considered a cornerstone of statistical methodology. For a special case of indirect regression, we investigate the residual-based empirical distribution function and provide a uniform expansion of this estimator, which is also shown to be asymptotically most precise. This investigation naturally leads to a completely data-driven technique for selecting a regularization parameter used in our indirect regression function estimator. The resulting methodology is based on a smooth bootstrap of the model residuals. A simulation study demonstrates the effectiveness of our approach.
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