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arxiv: 1507.00438 · v1 · pith:GB4BDWAPnew · submitted 2015-07-02 · 💻 cs.LG · cs.NA· stat.ML

DC Proximal Newton for Non-Convex Optimization Problems

classification 💻 cs.LG cs.NAstat.ML
keywords algorithmfunctionlossnon-convexconvexdescentfunctionslearning
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We introduce a novel algorithm for solving learning problems where both the loss function and the regularizer are non-convex but belong to the class of difference of convex (DC) functions. Our contribution is a new general purpose proximal Newton algorithm that is able to deal with such a situation. The algorithm consists in obtaining a descent direction from an approximation of the loss function and then in performing a line search to ensure sufficient descent. A theoretical analysis is provided showing that the iterates of the proposed algorithm {admit} as limit points stationary points of the DC objective function. Numerical experiments show that our approach is more efficient than current state of the art for a problem with a convex loss functions and non-convex regularizer. We have also illustrated the benefit of our algorithm in high-dimensional transductive learning problem where both loss function and regularizers are non-convex.

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