Title
Distance majorization and its applications.
Abstract
The problem of minimizing a continuously differentiable convex function over an intersection of closed convex sets is ubiquitous in applied mathematics. It is particularly interesting when it is easy to project onto each separate set, but nontrivial to project onto their intersection. Algorithms based on Newton’s method such as the interior point method are viable for small to medium-scale problems. However, modern applications in statistics, engineering, and machine learning are posing problems with potentially tens of thousands of parameters or more. We revisit this convex programming problem and propose an algorithm that scales well with dimensionality. Our proposal is an instance of a sequential unconstrained minimization technique and revolves around three ideas: the majorization-minimization principle, the classical penalty method for constrained optimization, and quasi-Newton acceleration of fixed-point algorithms. The performance of our distance majorization algorithms is illustrated in several applications.
Year
DOI
Venue
2014
10.1007/s10107-013-0697-1
Math. Program.
Keywords
Field
DocType
bioinformatics,biomedical research
Mathematical optimization,Computer science,Regular polygon,Curse of dimensionality,Minification,Convex function,Convex optimization,Interior point method,Constrained optimization,Penalty method
Journal
Volume
Issue
ISSN
146
1-2
1436-4646
Citations 
PageRank 
References 
1
0.37
13
Authors
3
Name
Order
Citations
PageRank
Eric C. Chi1936.89
Hua Zhou2376.92
Kenneth Lange331043.08