Affiliation:
1. University of Aveiro
2. University of Porto
3. University of Minho
4. Palo Alto Research Centre (PARC), A Xerox Company
5. University of Lincoln
6. University of Darmstadt
Abstract
Many stochastic search algorithms are designed to optimize a fixed objective function to learn a task,
i.e., if the objective function changes slightly, for example, due to a change in the situation or context of the task,
relearning is required to adapt to the new context. For instance, if we want to learn a kicking movement for a soccer robot,
we have to relearn the movement for different ball locations. Such relearning is undesired as it is highly inefficient
and many applications require a fast adaptation to a new context/situation. Therefore, we investigate contextual stochastic search
algorithms that can learn multiple, similar tasks simultaneously. Current contextual stochastic search methods are based
on policy search algorithms and suffer from premature convergence and the need for parameter tuning.
In this paper, we extend the well known CMA-ES algorithm to the contextual setting and illustrate its performance on several contextual tasks.
Our new algorithm, called contextual CMA-ES, leverages from contextual learning while it preserves all the features of standard CMA-ES such
as stability, avoidance of premature convergence, step size control and a minimal amount of parameter tuning.
Publisher
International Joint Conferences on Artificial Intelligence Organization
Cited by
2 articles.
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