Importance sampling Simulated annealing a b s t r a c t In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for approximating the set of globally optimal solutions when solving optimization problems such as optimal perfor-mance-based design problems. This method is based on Asymptotically Independent Markov Sampling (AIMS), a recently developed advanced simulation scheme originally proposed for Bayesian inference. This scheme combines importance sampling, Markov chain Monte Carlo simulation and annealing for efficient sampling from an arbitrary target distribution over a multi-dimensional space. Instead of a sin-gle approximation of the optimal solution, AIMS-OPT produces a set of nearly optimal solutions whe...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
La version rapport technique s'intitule "Bayesian Optimal Design via Interacting MCMC"We propose a n...
In this tutorial we consider the problem of finding the best set up to use for a system, where the o...
In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for approximatin...
ABSTRACT: In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for ap...
All topics in this dissertation are centered around global optimization problems. The major part of ...
This paper presents a Markov sampling-based framework, called Asymptotic Bayesian Optimization, for ...
In this paper, we propose a population-based optimization algorithm, Sequential Monte Carlo Simulate...
Though a global optimization procedure using a randomized algorithm and a commercial process simulat...
Simulated annealing is a widely used algorithm for the computation of global optimization problems i...
In this paper the problem of reliability-based optimization is considered. A global optimization met...
In Bayesian inference, many problems can be expressed as the evaluation of the expectation of an unc...
Abstract. Methods for solving stochastic optimization problems by Monte-Carlo simulation are conside...
International audienceWe propose a new stochastic algorithm for Bayesian-optimal design in nonlinear...
The researchers made significant progress in all of the proposed research areas. The first major tas...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
La version rapport technique s'intitule "Bayesian Optimal Design via Interacting MCMC"We propose a n...
In this tutorial we consider the problem of finding the best set up to use for a system, where the o...
In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for approximatin...
ABSTRACT: In this paper, we introduce a new efficient stochastic simulation method, AIMS-OPT, for ap...
All topics in this dissertation are centered around global optimization problems. The major part of ...
This paper presents a Markov sampling-based framework, called Asymptotic Bayesian Optimization, for ...
In this paper, we propose a population-based optimization algorithm, Sequential Monte Carlo Simulate...
Though a global optimization procedure using a randomized algorithm and a commercial process simulat...
Simulated annealing is a widely used algorithm for the computation of global optimization problems i...
In this paper the problem of reliability-based optimization is considered. A global optimization met...
In Bayesian inference, many problems can be expressed as the evaluation of the expectation of an unc...
Abstract. Methods for solving stochastic optimization problems by Monte-Carlo simulation are conside...
International audienceWe propose a new stochastic algorithm for Bayesian-optimal design in nonlinear...
The researchers made significant progress in all of the proposed research areas. The first major tas...
In this paper we are concerned with global optimization, which can be defined as the problem of find...
La version rapport technique s'intitule "Bayesian Optimal Design via Interacting MCMC"We propose a n...
In this tutorial we consider the problem of finding the best set up to use for a system, where the o...