Authors
Patrick L Combettes, Saverio Salzo, Silvia Villa
Publication date
2018/1
Journal
Mathematical Programming
Volume
167
Pages
99-127
Publisher
Springer Berlin Heidelberg
Description
We investigate the modeling and the numerical solution of machine learning problems with prediction functions which are linear combinations of elements of a possibly infinite dictionary of functions. We propose a novel flexible composite regularization model, which makes it possible to incorporate various priors on the coefficients of the prediction function, including sparsity and hard constraints. We show that the estimators obtained by minimizing the regularized empirical risk are consistent in a statistical sense, and we design an error-tolerant composite proximal thresholding algorithm for computing such estimators. New results on the asymptotic behavior of the proximal forward–backward splitting method are derived and exploited to establish the convergence properties of the proposed algorithm. In particular, our method features a o(1 / m) convergence rate in objective values.
Total citations
2017201820192020202120222023202413161211
Scholar articles
PL Combettes, S Salzo, S Villa - Mathematical Programming, 2018