Back to Search Start Over

HAMSI: A Parallel Incremental Optimization Algorithm Using Quadratic Approximations for Solving Partially Separable Problems

Authors :
Kaya, Kamer
Öztoprak, Figen
Birbil, Ş. İlker
Cemgil, A. Taylan
Şimşekli, Umut
Kuru, Nurdan
Koptagel, Hazal
Öztürk, M. Kaan
Publication Year :
2015

Abstract

We propose HAMSI (Hessian Approximated Multiple Subsets Iteration), which is a provably convergent, second order incremental algorithm for solving large-scale partially separable optimization problems. The algorithm is based on a local quadratic approximation, and hence, allows incorporating curvature information to speed-up the convergence. HAMSI is inherently parallel and it scales nicely with the number of processors. Combined with techniques for effectively utilizing modern parallel computer architectures, we illustrate that the proposed method converges more rapidly than a parallel stochastic gradient descent when both methods are used to solve large-scale matrix factorization problems. This performance gain comes only at the expense of using memory that scales linearly with the total size of the optimization variables. We conclude that HAMSI may be considered as a viable alternative in many large scale problems, where first order methods based on variants of stochastic gradient descent are applicable.<br />Comment: The software is available at https://github.com/spartensor/hamsi-mf

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1509.01698
Document Type :
Working Paper