Evidence-Augmented Policy Optimization with Reward Co-Evolution for Long-Context Reasoning

📰 ArXiv cs.AI

arXiv:2601.10306v2 Announce Type: replace Abstract: While Reinforcement Learning (RL) has advanced LLM reasoning, applying it to long-context scenarios is hindered by sparsity of outcome rewards. This limitation fails to penalize ungrounded "lucky guesses," leaving the critical process of needle-in-a-haystack evidence retrieval largely unsupervised. To address this, we propose EAPO (Evidence-Augmented Policy Optimization). We first establish the Evidence-Augmented Reasoning paradigm, validating

Published 21 Apr 2026
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