In the context of unconstraint numerical optimization, this paper investigates the global linear convergence of a simple probabilistic derivative-free optimization algorithm (DFO). The algorithm samples a candidate solution from a standard multivariate normal distribution scaled by a step-size and centered in the current solution. This solution is accepted if it has a better objective function value than the current one. Crucial to the algorithm is the adaptation of the step-size that is done in order to maintain a certain probability of success. The algorithm, already proposed in the 60's, is a generalization of the well-known Rechenberg's $(1+1)$ Evolution Strategy (ES) with one-fifth success rule which was also proposed by Devroye under ...
The connection between the conditioning of a problem instance -- the sensitivity of a problem instan...
Pure adaptive seach iteratively constructs a sequence of interior points uniformly distributed withi...
We investigate various aspects of adaptive randomized (or stochastic) algorithms for both constraine...
In the context of unconstraint numerical optimization, this paper investigates the global linear con...
Abstract. In the context of unconstraint numerical optimization, this paper investigates the global ...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
Abstract. In this paper, we consider comparison-based stochastic algorithms for solving numer-ical o...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
International audienceEvolution Strategies (ES) are stochastic derivative-free optimization algorith...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
Evolution Strategies (ES) are stochastic derivative-free optimization algorithms whose most prominen...
International audienceEvolution strategies (ESs) are zero-order stochastic black-box optimization he...
We present global convergence rates for a line-search method which is based on random first-order mo...
International audienceThis paper analyses a $(1,\lambda)$-Evolution Strategy, a randomised compariso...
The connection between the conditioning of a problem instance -- the sensitivity of a problem instan...
Pure adaptive seach iteratively constructs a sequence of interior points uniformly distributed withi...
We investigate various aspects of adaptive randomized (or stochastic) algorithms for both constraine...
In the context of unconstraint numerical optimization, this paper investigates the global linear con...
Abstract. In the context of unconstraint numerical optimization, this paper investigates the global ...
Abstract. In the context of numerical optimization, this paper develops a methodology to ana-lyze th...
Abstract. In this paper, we consider comparison-based stochastic algorithms for solving numer-ical o...
International audienceThis paper analyzes a (1, λ)-Evolution Strategy, a randomized comparison-based...
International audienceEvolution Strategies (ES) are stochastic derivative-free optimization algorith...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
Evolution Strategies (ES) are stochastic derivative-free optimization algorithms whose most prominen...
International audienceEvolution strategies (ESs) are zero-order stochastic black-box optimization he...
We present global convergence rates for a line-search method which is based on random first-order mo...
International audienceThis paper analyses a $(1,\lambda)$-Evolution Strategy, a randomised compariso...
The connection between the conditioning of a problem instance -- the sensitivity of a problem instan...
Pure adaptive seach iteratively constructs a sequence of interior points uniformly distributed withi...
We investigate various aspects of adaptive randomized (or stochastic) algorithms for both constraine...