Abstract
Most of the non-asymptotic theoretical work in regression is carried out for the square loss, where estimators can be obtained through closed-form expressions. In this paper, we use and extend tools from the convex optimization literature, namely self-concordant functions, to provide simple extensions of theoretical results for the square loss to the logistic loss. We apply the extension techniques to logistic regression with regularization by the ℓ2-norm and regularization by the ℓ1-norm, showing that new results for binary classification through logistic regression can be easily derived from corresponding results for least-squares regression.
Citation
Francis Bach. "Self-concordant analysis for logistic regression." Electron. J. Statist. 4 384 - 414, 2010. https://doi.org/10.1214/09-EJS521
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