Stochastic search algorithms are general black-box optimizers. Due to their ease of use and their generality, they have recently also gained a lot of attention in operations research, machine learning and policy search. Yet, these algorithms require a lot of evaluations of the objective, scale poorly with the problem dimension, are affected by highly noisy objective functions and may converge prematurely. To alleviate these problems, we introduce a new surrogate-based stochastic search approach. We learn simple, quadratic surrogate models of the objective function. As the quality of such a quadratic approximation is limited, we do not greedily exploit the learned models. The algorithm can be misled by an inaccurate optimum introduc...
Artificial intelligent agents that behave like humans have become a defining theme and one of the ma...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
http://www.machinelearning.orgInternational audienceIn global optimization, when the evaluation of t...
In both industrial and service domains, a central benefit of the use of robots is their ability to q...
The MAP-i Doctoral Programme in Informatics, of the Universities of Minho, Aveiro and PortoOptimizat...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
This dissertation considers several common notions of complexity that arise in large-scale systems o...
The most fundamental problem encountered in the field of stochastic optimization and control, is the...
Stochastic search algorithms are black-box optimizer of an objective function. They have recently ga...
We examine the conventional wisdom that commends the use of directe search methods in the presence o...
International audienceWe derive a stochastic search procedure for parameter optimization from two fi...
ABSTRACT: This work is in the context of blackbox optimization where the functions defining the prob...
In this paper we study convex stochastic search problems where a noisy objective function value is o...
Sample efficiency is one of the key factors when applying policy search to real-world problems. In r...
We propose a novel information-theoretic approach for Bayesian optimization called Predictive Entrop...
Artificial intelligent agents that behave like humans have become a defining theme and one of the ma...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
http://www.machinelearning.orgInternational audienceIn global optimization, when the evaluation of t...
In both industrial and service domains, a central benefit of the use of robots is their ability to q...
The MAP-i Doctoral Programme in Informatics, of the Universities of Minho, Aveiro and PortoOptimizat...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
This dissertation considers several common notions of complexity that arise in large-scale systems o...
The most fundamental problem encountered in the field of stochastic optimization and control, is the...
Stochastic search algorithms are black-box optimizer of an objective function. They have recently ga...
We examine the conventional wisdom that commends the use of directe search methods in the presence o...
International audienceWe derive a stochastic search procedure for parameter optimization from two fi...
ABSTRACT: This work is in the context of blackbox optimization where the functions defining the prob...
In this paper we study convex stochastic search problems where a noisy objective function value is o...
Sample efficiency is one of the key factors when applying policy search to real-world problems. In r...
We propose a novel information-theoretic approach for Bayesian optimization called Predictive Entrop...
Artificial intelligent agents that behave like humans have become a defining theme and one of the ma...
Many fundamental problems in mathematics can be considered search problems, where one can make seque...
http://www.machinelearning.orgInternational audienceIn global optimization, when the evaluation of t...