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Research

Enhancing Policy Learning with World-Action Model

Zac Boring April 1, 2026 1 min read
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This paper presents the World-Action Model (WAM), an action-regularized world model that jointly reasons over future visual observations and the actions that drive state transitions. Unlike conventional world models trained solely via image prediction, WAM incorporates an inverse dynamics objective into DreamerV2 that predicts actions from latent state transitions, encouraging the learned representations to capture action-relevant structure critica

By Yuci Han, Alper Yilmaz

Read the full article at ArXiv cs.AI →