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Logistic regression with total variation regularization

Authors :
van de Geer, Sara
Publication Year :
2020

Abstract

We study logistic regression with total variation penalty on the canonical parameter and show that the resulting estimator satisfies a sharp oracle inequality: the excess risk of the estimator is adaptive to the number of jumps of the underlying signal or an approximation thereof. In particular when there are finitely many jumps, and jumps up are sufficiently separated from jumps down, then the estimator converges with a parametric rate up to a logarithmic term $\log n / n$, provided the tuning parameter is chosen appropriately of order $1/ \sqrt n$. Our results extend earlier results for quadratic loss to logistic loss. We do not assume any a priori known bounds on the canonical parameter but instead only make use of the local curvature of the theoretical risk.<br />Comment: 23 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2003.02678
Document Type :
Working Paper