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Find Your Optimal Teacher: Personalized Data Synthesis via Router-Guided Multi-Teacher Distillation

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Training student models on synthetic data generated by strong teacher models is a promising way to distilling the capabilities of teachers. However, recent studies show that stronger models are not always optimal teachers, revealing a mismatch between teacher outputs and student learnability. To address this issue, we propose PerSyn (Personalized data Synthesis), a novel synthesis strategy that operates under a new ``Route then Generate'' paradigm to create data tailored to each student model, enabling it to learn more effectively. Specifically, PerSyn first assigns each prompt to its optimal teacher via a query-level router that jointly considers student learnability and teacher response quality. Each teacher then synthesizes data only for its assigned prompts, making the process more efficient than the conventional ``Generate then Select'' paradigm, where all teachers must generate parallel responses for the entire prompt set before constructing the final dataset. Extensive experiments across different model families and scales demonstrate that PerSyn consistently achieves superior or comparable performance to all baselines in instruct tuning and math reasoning settings. Further analysis verifies the effectiveness of PerSyn and offers extra insights to propel future research.

Hengyuan Zhang, Shiping Yang, Xiao Liang, Chenming Shang, Yuxuan Jiang, Chaofan Tao, Jing Xiong, Hayden Kwok-Hay So, Ruobing Xie, Angel X. Chang, Ngai Wong• 2025

Related benchmarks

TaskDatasetResultRank
Mathematical ReasoningMATH
Accuracy57.8
882
Instruction FollowingIFEval
IFEval Accuracy62.15
625
TruthfulnessTruthfulQA
Truthfulness Accuracy55.14
86
FactualityTruthfulQA
Accuracy29.5
60
ReasoningLiveBench
Accuracy22.3
25
General ReasoningLiveBench
Accuracy53.47
20
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