International audienceIn this paper, we study optimization methods consisting of iteratively minimizing surrogates of an objective function. By proposing several algorithmic variants and simple convergence analyses, we make two main contributions. First, we provide a unified viewpoint for several first-order optimization techniques such as accelerated proximal gradient, block coordinate descent, or Frank-Wolfe algorithms. Second, we introduce a new incremental scheme that experimentally matches or outperforms state-of-the-art solvers for large-scale optimization problems typically arising in machine learning
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Design optimization problems are often formulated as an optimization problem whose objective is a fu...
Optimization is an important discipline of applied mathematics with far-reaching applications. Optim...
Introduction. Recent work has shown many connections between conditional gradient and other first-or...
The interplay between optimization and machine learning is one of the most important developments in...
International audienceMajorization-minimization algorithms consist of successively minimizing a sequ...
Multi-objective optimization problems are usually solved with genetic algorithms when the objective ...
Published online 2 October 2007Let f(x) denote an objective function that maps a vector x of length ...
This work presents enhancements to a surrogate-assisted evolutionary optimization framework proposed...
Abstract. Majorization-minimization algorithms consist of successively minimizing a sequence of uppe...
In multi-objective optimization problems, expensive high-fidelity simulations are commonly replaced ...
Surrogate maximization (or minimization) (SM) algorithms are a family of algorithms that can be rega...
Invented some 65 years ago in a seminal paper by Marguerite Straus-Frank and Philip Wolfe, the Frank...
First-order methods are gaining substantial interest in the past two decades because of their superi...
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Design optimization problems are often formulated as an optimization problem whose objective is a fu...
Optimization is an important discipline of applied mathematics with far-reaching applications. Optim...
Introduction. Recent work has shown many connections between conditional gradient and other first-or...
The interplay between optimization and machine learning is one of the most important developments in...
International audienceMajorization-minimization algorithms consist of successively minimizing a sequ...
Multi-objective optimization problems are usually solved with genetic algorithms when the objective ...
Published online 2 October 2007Let f(x) denote an objective function that maps a vector x of length ...
This work presents enhancements to a surrogate-assisted evolutionary optimization framework proposed...
Abstract. Majorization-minimization algorithms consist of successively minimizing a sequence of uppe...
In multi-objective optimization problems, expensive high-fidelity simulations are commonly replaced ...
Surrogate maximization (or minimization) (SM) algorithms are a family of algorithms that can be rega...
Invented some 65 years ago in a seminal paper by Marguerite Straus-Frank and Philip Wolfe, the Frank...
First-order methods are gaining substantial interest in the past two decades because of their superi...
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Design optimization problems are often formulated as an optimization problem whose objective is a fu...
Optimization is an important discipline of applied mathematics with far-reaching applications. Optim...