Model-Based Relative Entropy Stochastic Search

Abdolmaleki, Abbas, Lioutikov, Rudolf, Peters, Jan R., Lau, Nuno, Reis, Luis Pualo, Neumann, Gerhard

Neural Information Processing Systems 

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.