Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-Kantorovich gradient system formulation with vanishing forces, we formally extend the simulated annealing method to a wide class of global optimization methods. Due to an inbuilt combination of a gradient-like strategy and particles interactions, we call them swarm gradient dynamics. As in the original paper of Holley-Kusuoka-Stroock, the key to the existence of a schedule ensuring convergence to a global minimizeris a functional inequality. One of our central theoretical contributions is the proof of such an inequality for one-dimensional compact manifolds. We conjecture the inequality to be true in a much wider setting. We also describe a ge...
The majority of stochastic optimization algorithms can be writ- ten in the general form $x_{t+1}= T...
In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Partic...
This paper presents a coercive smoothed penalty framework for nonsmooth and nonconvex constrained gl...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
In this paper we provide a rigorous convergence analysis for the renowned particle swarm optimizatio...
Particle swarm and simulated annealing optimization algorithms proved to be valid in finding a globa...
Programs that work very well in optimizing convex functions very often perform poorly when the probl...
We investigate the implementation of a new stochastic Kuramoto-Vicsek-type model for global optimiza...
We study the complexity of finding the global solution to stochastic nonconvex optimization when the...
Particle swarm and simulated annealing optimization algorithms proved to be valid in finding a globa...
This book presents powerful techniques for solving global optimization problems on manifolds by mean...
Many problems in data mining and machine learning are related to optimization, and optimization tech...
We introduce a practical method for incorporating equality and inequality constraints in global opti...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
The majority of stochastic optimization algorithms can be writ- ten in the general form $x_{t+1}= T...
In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Partic...
This paper presents a coercive smoothed penalty framework for nonsmooth and nonconvex constrained gl...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
Using jointly geometric and stochastic reformulations of nonconvex problems and exploiting a Monge-K...
In this paper we provide a rigorous convergence analysis for the renowned particle swarm optimizatio...
Particle swarm and simulated annealing optimization algorithms proved to be valid in finding a globa...
Programs that work very well in optimizing convex functions very often perform poorly when the probl...
We investigate the implementation of a new stochastic Kuramoto-Vicsek-type model for global optimiza...
We study the complexity of finding the global solution to stochastic nonconvex optimization when the...
Particle swarm and simulated annealing optimization algorithms proved to be valid in finding a globa...
This book presents powerful techniques for solving global optimization problems on manifolds by mean...
Many problems in data mining and machine learning are related to optimization, and optimization tech...
We introduce a practical method for incorporating equality and inequality constraints in global opti...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
The majority of stochastic optimization algorithms can be writ- ten in the general form $x_{t+1}= T...
In this paper we compare the performance of the Differential Evolution (DE) and the Repulsive Partic...
This paper presents a coercive smoothed penalty framework for nonsmooth and nonconvex constrained gl...