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From Generic Correlation to Input-Specific Credit in On-Policy Self Distillation

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On-policy self-distillation has emerged as a promising paradigm for post-training language models, in which the model conditions on environment feedback to serve as its own teacher, providing dense token-level rewards without external teacher models or step-level annotations. Despite its empirical success, what this reward actually measures and what kind of credit it assigns remain unclear. Under a posterior-compatibility interpretation of feedback conditioning, standard in the implicit-reward literature, we show that the self-distillation token reward is a Bayesian filtering increment whose trajectory sum is exactly the pointwise mutual information between the response and the feedback given the input. This pMI can be raised by input-specific reasoning or by input-generic shortcuts, so we further decompose the teacher log-probability along the input axis. Based on this analysis, we propose CREDIT (Contrastive REward from DIsTillation), which isolates the input-specific component with a batch-contrastive baseline. At the sequence level, CREDIT is a teacher-side surrogate for a contrastive pMI objective that also penalizes responses remaining likely under unrelated inputs. Across coding, scientific reasoning, and tool-use benchmarks on two model families, CREDIT delivers the strongest aggregate performance at negligible additional compute.

Guobin Shen, Lei Huang, Xiang Cheng, Chenxiao Zhao, Jindong Li, Dongcheng Zhao, Xing Yu• 2026

Related benchmarks

TaskDatasetResultRank
Scientific ReasoningSciKnowEval
Chemistry Accuracy69.2
47
Tool UseToolAlpaca
Tool Use Success Rate70.4
26
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