Autonomous Learning of Features for Control: Experiments with Embodied
and Situated Agents
- URL: http://arxiv.org/abs/2009.07132v1
- Date: Tue, 15 Sep 2020 14:34:42 GMT
- Title: Autonomous Learning of Features for Control: Experiments with Embodied
and Situated Agents
- Authors: Nicola Milano, Stefano Nolfi
- Abstract summary: We introduce a method that permits to continue the training of the feature-extraction module during the training of the policy network.
We show that sequence-to-sequence learning yields better results than the methods considered in previous studies.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As discussed in previous studies, the efficacy of evolutionary or
reinforcement learning algorithms for continuous control optimization can be
enhanced by including a neural module dedicated to feature extraction trained
through self-supervised methods. In this paper we report additional experiments
supporting this hypothesis and we demonstrate how the advantage provided by
feature extraction is not limited to problems that benefit from dimensionality
reduction or that involve agents operating on the basis of allocentric
perception. We introduce a method that permits to continue the training of the
feature-extraction module during the training of the policy network and that
increases the efficacy of feature extraction. Finally, we compare alternative
feature-extracting methods and we show that sequence-to-sequence learning
yields better results than the methods considered in previous studies.
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