Proximal Newton-type methods for convex optimization

Lee, Jason D., Sun, Yuekai, Saunders, Michael

Neural Information Processing Systems 

R is a convex but not necessarily differentiable function whose proximal mapping can be evaluated efficiently.We derive a generalization of Newton-type methods to handle such convex but nonsmooth objective functions. We prove such methods are globally convergentand achieve superlinear rates of convergence in the vicinity of an optimal solution. We also demonstrate the performance of these methods using problems of relevance in machine learning and statistics.

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