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Unsupervised Learning and Exploration of Reachable Outcome Space

TAXONS, a task-agnostic exploration algorithm, learns diverse policies in sparse reward environments using population-based search and autoencoder-driven outcome space reconstruction.

Year
2019
Venue
arXiv 2019
Authors
4
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arxiv.org/abs/1909.05508v4ARXIV-DEFAULT
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Abstract

Performing Reinforcement Learning in sparse rewards settings, with very little prior knowledge, is a challenging problem since there is no signal to properly guide the learning process. In such situations, a good search strategy is fundamental. At the same time, not having to adapt the algorithm to every single problem is very desirable. Here we introduce TAXONS, a Task Agnostic eXploration of Outcome spaces through Novelty and Surprise algorithm. Based on a population-based divergent-search approach, it learns a set of diverse policies directly from high-dimensional observations, without any task-specific information. TAXONS builds a repertoire of policies while training an autoencoder on the high-dimensional observation of the final state of the system to build a low-dimensional outcome space. The learned outcome space, combined with the reconstruction error, is used to drive the search for new policies. Results show that TAXONS can find a diverse set of controllers, covering a good part of the ground-truth outcome space, while having no information about such space.

Authors

4