AI RESEARCH
Rethinking Entropy Minimization in Test-Time Adaptation for Autoregressive Models
arXiv CS.AI
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ArXi:2605.08186v1 Announce Type: cross Test-Time Adaptation (TTA) via entropy minimization (EM) has proven effective for classification tasks, yet its application to generative autoregressive models remains theoretically fragmented. Existing approaches typically rely on distinct heuristics, such as teacher forcing with pseudo labels or policy-gradient-based reinforcement learning, without a unified mathematical foundation. In this work, we resolve this discrepancy by deriving a rigorous formulation of EM tailored to autoregressive models.