AI RESEARCH
ChainFlow-VLA: Causal Flow Planning with Vision-Language Models
arXiv CS.AI
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ArXi:2605.23270v1 Announce Type: cross Current end-to-end autonomous driving systems are fundamentally limited by a mismatch between temporal causal reasoning and global trajectory consistency. Autoregressive (AR) models capture interaction-aware temporal dependencies via causal factorization, but their step-wise decoding leads to error accumulation and suboptimal global structure. In contrast, diffusion models optimize trajectories globally but lack explicit causal constraints, making them unreliable in interactive and safety-critical scenarios.