We introduce a new consensus based optimization (CBO) method where interacting particle system is driven by jump-diffusion stochastic differential equations. We study well-posedness of the particle system as well as of its mean-field limit. The major contributions of this paper are proofs of convergence of the interacting particle system towards the mean-field limit and convergence of a discretized particle system towards the continuous-time dynamics in the mean-square sense. We also prove convergence of the mean-field jump-diffusion SDEs towards global minimizer for a large class of objective functions. We demonstrate improved performance of the proposed CBO method over earlier CBO methods in numerical simulations on benchmark objective fu...
In questo elaborato viene presentato un algoritmo Consensus-Based per l'ottimizazione vincolata a ip...
In this work we introduce a new class of gradient-free global optimization methods based on a binary...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
We introduce a new consensus-based optimization (CBO) method where an interacting particle system is...
We introduce a novel first-order stochastic swarm intelligence (SI) model in the spirit of consensus...
In this paper, we consider a continuous description based on stochastic differential equations of th...
We introduce a practical method for incorporating equality and inequality constraints in global opti...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
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 a rigorous convergence analysis for the renowned particle swarm optimizatio...
We improve recently introduced consensus-based optimization method, proposed in [R. Pinnau, C. Totze...
In questo elaborato viene presentato un algoritmo Consensus-Based per l'ottimizazione vincolata a ip...
In this work we introduce a new class of gradient-free global optimization methods based on a binary...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
We introduce a new consensus-based optimization (CBO) method where an interacting particle system is...
We introduce a novel first-order stochastic swarm intelligence (SI) model in the spirit of consensus...
In this paper, we consider a continuous description based on stochastic differential equations of th...
We introduce a practical method for incorporating equality and inequality constraints in global opti...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...
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 a rigorous convergence analysis for the renowned particle swarm optimizatio...
We improve recently introduced consensus-based optimization method, proposed in [R. Pinnau, C. Totze...
In questo elaborato viene presentato un algoritmo Consensus-Based per l'ottimizazione vincolata a ip...
In this work we introduce a new class of gradient-free global optimization methods based on a binary...
In this paper, we provide an analytical framework for investigating the efficiency of a consensus-ba...