DocumentCode
48773
Title
Parallel Selective Algorithms for Nonconvex Big Data Optimization
Author
Facchinei, Francisco ; Scutari, Gesualdo ; Sagratella, Simone
Author_Institution
Dept. of Comput., Control, & Manage. Eng., Univ. of Rome La Sapienza, Rome, Italy
Volume
63
Issue
7
fYear
2015
fDate
1-Apr-15
Firstpage
1874
Lastpage
1889
Abstract
We propose a decomposition framework for the parallel optimization of the sum of a differentiable (possibly nonconvex) function and a (block) separable nonsmooth, convex one. The latter term is usually employed to enforce structure in the solution, typically sparsity. Our framework is very flexible and includes both fully parallel Jacobi schemes and Gauss-Seidel (i.e., sequential) ones, as well as virtually all possibilities “in between” with only a subset of variables updated at each iteration. Our theoretical convergence results improve on existing ones, and numerical results on LASSO, logistic regression, and some nonconvex quadratic problems show that the new method consistently outperforms existing algorithms.
Keywords
Big Data; Jacobian matrices; optimisation; parallel algorithms; regression analysis; Gauss-Seidel schemes; LASSO; decomposition framework; differentiable function; fully parallel Jacobi schemes; logistic regression; nonconvex big data optimization; nonconvex quadratic problems; parallel optimization; parallel selective algorithms; separable nonsmooth convex function; Approximation methods; Convergence; Jacobian matrices; Optimization; Signal processing algorithms; Standards; Vectors; Jacobi method; LASSO; Parallel optimization; distributed methods; sparse solution; variables selection;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2015.2399858
Filename
7029716
Link To Document