proximal regularization
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Author(s):  
Alberto De Marchi

AbstractThis paper introduces QPDO, a primal-dual method for convex quadratic programs which builds upon and weaves together the proximal point algorithm and a damped semismooth Newton method. The outer proximal regularization yields a numerically stable method, and we interpret the proximal operator as the unconstrained minimization of the primal-dual proximal augmented Lagrangian function. This allows the inner Newton scheme to exploit sparse symmetric linear solvers and multi-rank factorization updates. Moreover, the linear systems are always solvable independently from the problem data and exact linesearch can be performed. The proposed method can handle degenerate problems, provides a mechanism for infeasibility detection, and can exploit warm starting, while requiring only convexity. We present details of our open-source C implementation and report on numerical results against state-of-the-art solvers. QPDO proves to be a simple, robust, and efficient numerical method for convex quadratic programming.


CALCOLO ◽  
2020 ◽  
Vol 57 (4) ◽  
Author(s):  
Xiaokai Chang ◽  
Jianchao Bai ◽  
Dunjiang Song ◽  
Sanyang Liu

IEEE Access ◽  
2019 ◽  
Vol 7 ◽  
pp. 186352-186363
Author(s):  
Feixia Yang ◽  
Ziliang Ping ◽  
Fei Ma ◽  
Yanwei Wang

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