Title :
Parallel and distributed sparse optimization
Author :
Zhimin Peng ; Ming Yan ; Wotao Yin
Author_Institution :
Dept. of Math., Univ. of California, Los Angeles, Los Angeles, CA, USA
Abstract :
This paper proposes parallel and distributed algorithms for solving very large-scale sparse optimization problems on computer clusters and clouds. Modern datasets usually have a large number of features or training samples, and they are usually stored in a distributed manner. Motivated by the need of solving sparse optimization problems with large datasets, we propose two approaches including (i) distributed implementations of prox-linear algorithms and (ii) GRock, a parallel greedy block coordinate descent method. Different separability properties of the objective terms in the problem enable different data distributed schemes along with their corresponding algorithm implementations. We also establish the convergence of GRock and explain why it often performs exceptionally well for sparse optimization. Numerical results on a computer cluster and Amazon EC2 demonstrate the efficiency and elasticity of our algorithms.
Keywords :
convex programming; greedy algorithms; mathematics computing; parallel algorithms; Amazon EC2; GRock convergence; computer clusters; convex optimization; data distributed schemes; distributed algorithms; distributed sparse optimization; objective term separability property; parallel algorithms; parallel greedy block coordinate descent method; parallel sparse optimization; prox-linear algorithms; very large-scale sparse optimization problem solving; Broadcasting; Clustering algorithms; Convergence; Distributed databases; Logistics; Optimization; Vectors; GRock; LASSO; l1 minimization; parallel and distributed computing; sparse optimization;
Conference_Titel :
Signals, Systems and Computers, 2013 Asilomar Conference on
Conference_Location :
Pacific Grove, CA
Print_ISBN :
978-1-4799-2388-5
DOI :
10.1109/ACSSC.2013.6810364