AI RESEARCH
Adaptive Action Chunking via Multi-Chunk Q Value Estimation
arXiv CS.AI
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ArXi:2605.10044v1 Announce Type: cross Action chunking emerged as a pivotal technique in imitation learning, enabling policies to predict cohesive action sequences rather than single actions. Recently, this approach has expanded to reinforcement learning (RL), enhancing behavioral consistency and reducing bootstrapping errors in value function estimation. However, existing methods rely on a fixed chunk length, creating a performance bottleneck as the optimal length varies across states and tasks.