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Papers/Selective Off-Policy Reference Tuning with Plan Guidance
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Selective Off-Policy Reference Tuning with Plan Guidance

May 12, 2026

arXiv
Abstract

Reinforcement learning with verifiable rewards helps reasoning, but GRPO-style methods stall on hard prompts where all sampled rollouts fail. SORT adds a repair update for those failures without changing rollout generation: it derives a plan from the reference solution, compares token probabilities with and without that plan, and gives higher weight to tokens that become more predictable under plan conditioning. This turns all-wrong prompts into selective, structure-aware learning signals instead of uniform imitation. Across three backbones and eight reasoning benchmarks, SORT improves over GRPO and guidance baselines, with largest gains on weaker models.

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Authors
Duc Anh Le, Tien-Phat Nguyen, Thien Huu Nguyen, Linh Ngo Van, Trung Le
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arXiv:2605.11505