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BYOL-Explore: Exploration by Bootstrapped Prediction

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arxiv 2206.08332 v1 pith:VCRJ765N submitted 2022-06-16 cs.LG cs.AIstat.ML

BYOL-Explore: Exploration by Bootstrapped Prediction

classification cs.LG cs.AIstat.ML
keywords byol-exploreexplorationbenchmarkenvironmentspredictionrewardworldachieves
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present BYOL-Explore, a conceptually simple yet general approach for curiosity-driven exploration in visually-complex environments. BYOL-Explore learns a world representation, the world dynamics, and an exploration policy all-together by optimizing a single prediction loss in the latent space with no additional auxiliary objective. We show that BYOL-Explore is effective in DM-HARD-8, a challenging partially-observable continuous-action hard-exploration benchmark with visually-rich 3-D environments. On this benchmark, we solve the majority of the tasks purely through augmenting the extrinsic reward with BYOL-Explore s intrinsic reward, whereas prior work could only get off the ground with human demonstrations. As further evidence of the generality of BYOL-Explore, we show that it achieves superhuman performance on the ten hardest exploration games in Atari while having a much simpler design than other competitive agents.

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