AbstractWe introduce the notion of expected hitting time to a goal as a measure of the convergence rate of a Monte Carlo optimization method. The techniques developed apply to simulated annealing, genetic algorithms, and other stochastic search schemes. The expected hitting time can itself be calculated from the more fundamental complementary hitting time distribution (CHTD) which completely characterizes a Monte Carlo method. The CHTD is asymptotically a geometric series, (1/s)/(1 − λ), characterized by two parameters, s, λ, related to the search process in a simple way. The main utility of the CHTD is in comparing Monte Carlo algorithms. In particular we show that independent, identical Monte Carlo algorithms run in parallel, IIP parallel...
International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algor...
We propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e., randomize...
Solving vision problems often entails searching a solution space for optimal states that have maximu...
We introduce the notion of expected hitting time to a goal as a measure of the con- vergence rate o...
We address the parallelization of a Monte-Carlo search algorithm. On a cluster of 64 cores we obtain...
We argue that Monte Carlo algorithms are ideally suited to parallel computing, and that “parallel Mo...
Abstract—We address the parallelization of a Monte-Carlo search algorithm. On a cluster of 64 cores ...
Abstract. We argue that Monte Carlo algorithms are ideally suited to parallel computing, and that “p...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
Sequential sampling strategies based on Gaussian processes are now widely used for the optimization ...
International audienceMonte-Carlo Tree Search is now a well established algorithm, in games and beyo...
In this article we study stochastic multistart methods for global optimization, which combine local ...
Abstract. Improving Hit-and-Run is a random search algorithm for global optimization that at each it...
How long should we run a stochastic global optimisation algorithm such as simulated annealing? How s...
Monte Carlo Search algorithms can give excellent results for some combinatorial optimization problem...
International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algor...
We propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e., randomize...
Solving vision problems often entails searching a solution space for optimal states that have maximu...
We introduce the notion of expected hitting time to a goal as a measure of the con- vergence rate o...
We address the parallelization of a Monte-Carlo search algorithm. On a cluster of 64 cores we obtain...
We argue that Monte Carlo algorithms are ideally suited to parallel computing, and that “parallel Mo...
Abstract—We address the parallelization of a Monte-Carlo search algorithm. On a cluster of 64 cores ...
Abstract. We argue that Monte Carlo algorithms are ideally suited to parallel computing, and that “p...
AbstractIn this paper, we establish some bounds for the probability that stimulated annealing produc...
Sequential sampling strategies based on Gaussian processes are now widely used for the optimization ...
International audienceMonte-Carlo Tree Search is now a well established algorithm, in games and beyo...
In this article we study stochastic multistart methods for global optimization, which combine local ...
Abstract. Improving Hit-and-Run is a random search algorithm for global optimization that at each it...
How long should we run a stochastic global optimisation algorithm such as simulated annealing? How s...
Monte Carlo Search algorithms can give excellent results for some combinatorial optimization problem...
International audienceWe propose a probabilistic model for the parallel execution of Las Vegas algor...
We propose a probabilistic model for the parallel execution of Las Vegas algorithms, i.e., randomize...
Solving vision problems often entails searching a solution space for optimal states that have maximu...