AI RESEARCH
SPELL: Self-Play Reinforcement Learning for Evolving Long-Context Language Models
arXiv CS.CL
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ArXi:2509.23863v4 Announce Type: replace Progress in long-context reasoning for large language models (LLMs) has lagged behind other recent advances. This gap arises not only from the intrinsic difficulty of processing long texts, but also from the scarcity of reliable human annotations and programmatically verifiable reward signals. In this paper, we propose SPELL, a multi-role self-play reinforcement learning framework that enables scalable, label-free optimization for long-context reasoning.