5 research outputs found

    Degrees of Freedom for Piecewise Lipschitz Estimators

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    A representation of the degrees of freedom akin to Stein's lemma is given for a class of estimators of a mean value parameter in Rn\mathbb{R}^n. Contrary to previous results our representation holds for a range of discontinues estimators. It shows that even though the discontinuities form a Lebesgue null set, they cannot be ignored when computing degrees of freedom. Estimators with discontinuities arise naturally in regression if data driven variable selection is used. Two such examples, namely best subset selection and lasso-OLS, are considered in detail in this paper. For lasso-OLS the general representation leads to an estimate of the degrees of freedom based on the lasso solution path, which in turn can be used for estimating the risk of lasso-OLS. A similar estimate is proposed for best subset selection. The usefulness of the risk estimates for selecting the number of variables is demonstrated via simulations with a particular focus on lasso-OLS.Comment: 113 pages, 89 figure

    Supplementary Material for "Degrees of freedom for piecewise Lipschitz estimators"

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    Supplementary material for the paper "Degrees of freedom for piecewise Lipschitz estimators" (https://arxiv.org/abs/1601.03524), to appear in AIHP. Contains additional figures and r-code used for the simulation study

    A model based rule for selecting spiking thresholds in neuron models

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