In this paper we study anisotropic consensus-based optimization (CBO), a multi-agent metaheuristic derivative-free optimization method capable of globally minimizing nonconvex and nonsmooth functions in high dimensions. CBO is based on stochastic swarm intelligence, and inspired by consensus dynamics and opinion formation. Compared to other metaheuristic algorithms like particle swarm optimization, CBO is of a simpler nature and therefore more amenable to theoretical analysis. By adapting a recently established proof technique, we show that anisotropic CBO converges globally with a dimension-independent rate for a rich class of objective functions under minimal assumptions on the initialization of the method. Moreover, the proof technique r...
The rapid progress in machine learning in recent years has been based on a highly productive connect...
Metaheuristic algorithms have received much attention recently for solving different optimization an...
We introduce a new consensus based optimization (CBO) method where interacting particle system is dr...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
\u3cbr/\u3eWe introduce a novel first-order stochastic swarm intelligence (SI) model in the spirit o...
In questo elaborato viene presentato un algoritmo Consensus-Based per l'ottimizazione vincolata a ip...
We improve recently introduced consensus-based optimization method, proposed in [R. Pinnau, C. Totze...
In this paper we provide a rigorous convergence analysis for the renowned particle swarm optimizatio...
We investigate the implementation of a new stochastic Kuramoto-Vicsek-type model for global optimiza...
In this paper we propose a variant of a consensus-based global optimization (CBO) method that uses p...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Due to a lot of attention for the multi-agent system in recent years, the consensus algorithm gained...
In this paper, we consider a continuous description based on stochastic differential equations of th...
The rapid progress in machine learning in recent years has been based on a highly productive connect...
Metaheuristic algorithms have received much attention recently for solving different optimization an...
We introduce a new consensus based optimization (CBO) method where interacting particle system is dr...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
\u3cbr/\u3eWe introduce a novel first-order stochastic swarm intelligence (SI) model in the spirit o...
In questo elaborato viene presentato un algoritmo Consensus-Based per l'ottimizazione vincolata a ip...
We improve recently introduced consensus-based optimization method, proposed in [R. Pinnau, C. Totze...
In this paper we provide a rigorous convergence analysis for the renowned particle swarm optimizatio...
We investigate the implementation of a new stochastic Kuramoto-Vicsek-type model for global optimiza...
In this paper we propose a variant of a consensus-based global optimization (CBO) method that uses p...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Due to a lot of attention for the multi-agent system in recent years, the consensus algorithm gained...
In this paper, we consider a continuous description based on stochastic differential equations of th...
The rapid progress in machine learning in recent years has been based on a highly productive connect...
Metaheuristic algorithms have received much attention recently for solving different optimization an...
We introduce a new consensus based optimization (CBO) method where interacting particle system is dr...