Regularized Latent Dynamics Prediction is a Strong Baseline For Behavioral Foundation Models
arXiv cs.AI / 3/18/2026
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Key Points
- Regularized Latent Dynamics Prediction (RLDP) adds an orthogonality regularization to latent state features to maintain diversity and prevent collapse.
- The approach aims to be a simple, competitive baseline that can match or surpass complex representation-learning objectives for zero-shot RL.
- It shows robustness by performing well in low-coverage data scenarios where prior methods struggle.
- The work positions RLDP as a strong baseline for Behavioral Foundation Models, potentially reducing the need for extensive representation learning for BFMs.
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