AI RESEARCH
When to Re-Commit: Temporal Abstraction Discovery for Long-Horizon Vision-Language Reasoning
arXiv CS.AI
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ArXi:2605.09860v1 Announce Type: new Long-horizon reasoning requires deciding not only what actions to take, but how deeply to commit before the next observation. We formalize this as \emph{commitment depth}: the number of primitive actions executed open-loop between replans. Commitment depth induces a trade-off between replanning cost and compounding execution error, yet most existing long-horizon systems fix it as a hand-designed scalar. In this work, we instead treat commitment depth as a learnable, state-conditioned variable of the policy itself.