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 techn...
For multi-criteria problems and problems with poorly characterized objective, it is often desirable ...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Many important machine learning problems are modeled and solved via semidefinite programs; examples ...
The majorization-minimization (MM) principle is an important tool for developing algorithms to solve...
This thesis aims to propose an efficient numerical method for a historically popular problem, multi-...
We propose a new majorization-minimization (MM) method for non-smooth and non-convex programs, which...
The class of majorization–minimization algorithms is based on the principle of successively minimizi...
© 2019 International Joint Conferences on Artificial Intelligence. All rights reserved. Majorization...
Abstract. Majorization-minimization algorithms consist of successively minimizing a sequence of uppe...
Thesis (Ph.D.)--University of Washington, 2017Convex optimization is more popular than ever, with ex...
In a recent issue of this journal, Mordukhovich et al. pose and solve an interesting non-differentia...
Many machine learning algorithms rely heavily on the existence of a good measure of (dis-)similarity...
A simple optimization principle f (θ)g(θ) b κ Objective: min θ∈Θ f (θ) Principle called Majorization...
International audienceMajorization-minimization algorithms consist of successively minimizing a sequ...
We describe an important class of semidefinite programming problems that has received scant attentio...
For multi-criteria problems and problems with poorly characterized objective, it is often desirable ...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Many important machine learning problems are modeled and solved via semidefinite programs; examples ...
The majorization-minimization (MM) principle is an important tool for developing algorithms to solve...
This thesis aims to propose an efficient numerical method for a historically popular problem, multi-...
We propose a new majorization-minimization (MM) method for non-smooth and non-convex programs, which...
The class of majorization–minimization algorithms is based on the principle of successively minimizi...
© 2019 International Joint Conferences on Artificial Intelligence. All rights reserved. Majorization...
Abstract. Majorization-minimization algorithms consist of successively minimizing a sequence of uppe...
Thesis (Ph.D.)--University of Washington, 2017Convex optimization is more popular than ever, with ex...
In a recent issue of this journal, Mordukhovich et al. pose and solve an interesting non-differentia...
Many machine learning algorithms rely heavily on the existence of a good measure of (dis-)similarity...
A simple optimization principle f (θ)g(θ) b κ Objective: min θ∈Θ f (θ) Principle called Majorization...
International audienceMajorization-minimization algorithms consist of successively minimizing a sequ...
We describe an important class of semidefinite programming problems that has received scant attentio...
For multi-criteria problems and problems with poorly characterized objective, it is often desirable ...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
Many important machine learning problems are modeled and solved via semidefinite programs; examples ...