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SCOPE: Self-Play via Co-Evolving Policies for Open-Ended Tasks

About

Self-play can train language models without external supervision. However, existing methods require rule-checkable answers, leaving open-ended tasks dependent on curated prompts or frontier-model judges. We introduce SCOPE, a data-free self-play framework for open-ended tasks that co-evolves two policies: a Challenger that generates document-grounded tasks, and a Solver that answers them through multi-turn retrieval. A frozen copy of the initial model serves as the self-judge, which writes task-specific rubrics from the source document and grades Solver responses against them. Across three 7-8B instruction-tuned models (Qwen2.5, Qwen3, OLMo-3), SCOPE improves open-ended performance by up to +10.4 points on eight benchmarks and matches or exceeds GRPO_data trained on ~9K curated prompts. Although trained only on open-ended tasks, SCOPE also improves held-out short-form QA by up to +13.8 points on seven held-out benchmarks, surpassing GRPO_data on all three models. Ablations show that co-evolving the Challenger is necessary to keep tasks near the Solver's frontier, that gains arise from improvements in both retrieval and synthesis with the relative contribution varying by task, and that rubric generation quality is the bottleneck for self-judging.

Wai-Chung Kwan, Aryo Pradipta Gema, Joshua Ong Jun Leang, Pasquale Minervini• 2026

Related benchmarks

TaskDatasetResultRank
Creative WritingWildBench
WildBench Score46.1
49
CreativeArena-Hard CW
Score28.4
4
Scholarly QASQA v2
Score41.8
4
User AssistanceHealthBench
Score28.1
4
Deep ResearchDRB
Score57.6
4
Deep ResearchRubrics
Score31.3
4
PlanningResPlan
Score57.7
4
Scholarly QAResQA
Score53.7
4
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