AI RESEARCH
Regularized Latent Dynamics Prediction is a Strong Baseline For Behavioral Foundation Models
arXiv CS.AI
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ArXi:2603.15857v1 Announce Type: new Behavioral Foundation Models (BFMs) produce agents with the capability to adapt to any unknown reward or task. These methods, however, are only able to produce near-optimal policies for the reward functions that are in the span of some pre-existing state features, making the choice of state features crucial to the expressivity of the BFM. As a result, BFMs are trained using a variety of complex objectives and require sufficient dataset coverage, to train task-useful spanning features.