International audienceMotivated by some applications in signal processing and machine learning, we consider two convex optimization problems where, given a cone K, a norm ∥⋅∥ and a smooth convex function f, we want either 1) to minimize the norm over the intersection of the cone and a level set of f, or 2) to minimize over the cone the sum of f and a multiple of the norm. We focus on the case where (a) the dimension of the problem is too large to allow for interior point algorithms, (b) ∥⋅∥ is "too complicated" to allow for computationally cheap Bregman projections required in the first-order proximal gradient algorithms. On the other hand, we assume that {it is relatively easy to minimize linear forms over the intersection of K and the uni...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
The main purpose of this study is to propose, then analyze, and later test a spectral gradient algor...
AbstractCharacterizations of optimality for the abstract convex program μ = inf{p(x) : g(x) ϵ −S, x ...
Motivated by some applications in signal processing and machine learning, we consider two convex opt...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
International audience<p>We propose a conditional gradient framework for a composite convex minimiza...
Abstract. Linear optimization is many times algorithmically simpler than non-linear convex optimizat...
In this talk, we present a new framework for establishing error bounds for a class of structured con...
International audienceWe propose new optimization algorithms to minimize a sum of convex functions, ...
International audienceWe propose new optimization algorithms to minimize a sum of convex functions, ...
Abstract—We propose new optimization algorithms to min-imize a sum of convex functions, which may be...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
The main purpose of this study is to propose, then analyze, and later test a spectral gradient algor...
AbstractCharacterizations of optimality for the abstract convex program μ = inf{p(x) : g(x) ϵ −S, x ...
Motivated by some applications in signal processing and machine learning, we consider two convex opt...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
© 2017 Informa UK Limited, trading as Taylor & Francis Group We suggest simple implementable modif...
International audience<p>We propose a conditional gradient framework for a composite convex minimiza...
Abstract. Linear optimization is many times algorithmically simpler than non-linear convex optimizat...
In this talk, we present a new framework for establishing error bounds for a class of structured con...
International audienceWe propose new optimization algorithms to minimize a sum of convex functions, ...
International audienceWe propose new optimization algorithms to minimize a sum of convex functions, ...
Abstract—We propose new optimization algorithms to min-imize a sum of convex functions, which may be...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
Optimization problems with rank constraints appear in many diverse fields such as control, machine l...
The main purpose of this study is to propose, then analyze, and later test a spectral gradient algor...
AbstractCharacterizations of optimality for the abstract convex program μ = inf{p(x) : g(x) ϵ −S, x ...