2023
DOI: 10.1609/aaai.v37i8.26129
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Conceptual Reinforcement Learning for Language-Conditioned Tasks

Abstract: Despite the broad application of deep reinforcement learning (RL), transferring and adapting the policy to unseen but similar environments is still a significant challenge. Recently, the language-conditioned policy is proposed to facilitate policy transfer through learning the joint representation of observation and text that catches the compact and invariant information across various environments. Existing studies of language-conditioned RL methods often learn the joint representation as a simple latent laye… Show more

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