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Main Authors: Xiong, Jing, Shen, Hui, Gong, Shansan, Cheng, Yuxin, Shen, Jianghan, Tao, Chaofan, Tan, Haochen, Bai, Haoli, Shang, Lifeng, Wong, Ngai
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.21968
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author Xiong, Jing
Shen, Hui
Gong, Shansan
Cheng, Yuxin
Shen, Jianghan
Tao, Chaofan
Tan, Haochen
Bai, Haoli
Shang, Lifeng
Wong, Ngai
author_facet Xiong, Jing
Shen, Hui
Gong, Shansan
Cheng, Yuxin
Shen, Jianghan
Tao, Chaofan
Tan, Haochen
Bai, Haoli
Shang, Lifeng
Wong, Ngai
contents Knowledge distillation offers a promising path to transfer reasoning capabilities from large teacher models to efficient student models; however, existing token-level on-policy distillation methods require token-level alignment between the student and teacher models, which restricts the student model's exploration ability, prevent effective use of interactive environment feedback, and suffer from severe memory bottlenecks in reinforcement learning. We introduce On-policy Verbal Distillation (OVD), a memory-efficient framework that replaces token-level probability matching with trajectory matching using discrete verbal scores (0--9) from teacher models. OVD dramatically reduces memory consumption while enabling on-policy distillation from teacher models with verbal feedback, and avoids token-level alignment, allowing the student model to freely explore the output space. Extensive experiments on Web question answering and mathematical reasoning tasks show that OVD substantially outperforms existing methods, delivering up to +12.9% absolute improvement in average EM on Web Q&A tasks and a up to +25.7% gain on math benchmarks (when trained with only one random samples), while also exhibiting superior training efficiency. Our project page is available at https://OVD.github.io
format Preprint
id arxiv_https___arxiv_org_abs_2601_21968
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle OVD: On-policy Verbal Distillation
Xiong, Jing
Shen, Hui
Gong, Shansan
Cheng, Yuxin
Shen, Jianghan
Tao, Chaofan
Tan, Haochen
Bai, Haoli
Shang, Lifeng
Wong, Ngai
Computation and Language
Knowledge distillation offers a promising path to transfer reasoning capabilities from large teacher models to efficient student models; however, existing token-level on-policy distillation methods require token-level alignment between the student and teacher models, which restricts the student model's exploration ability, prevent effective use of interactive environment feedback, and suffer from severe memory bottlenecks in reinforcement learning. We introduce On-policy Verbal Distillation (OVD), a memory-efficient framework that replaces token-level probability matching with trajectory matching using discrete verbal scores (0--9) from teacher models. OVD dramatically reduces memory consumption while enabling on-policy distillation from teacher models with verbal feedback, and avoids token-level alignment, allowing the student model to freely explore the output space. Extensive experiments on Web question answering and mathematical reasoning tasks show that OVD substantially outperforms existing methods, delivering up to +12.9% absolute improvement in average EM on Web Q&A tasks and a up to +25.7% gain on math benchmarks (when trained with only one random samples), while also exhibiting superior training efficiency. Our project page is available at https://OVD.github.io
title OVD: On-policy Verbal Distillation
topic Computation and Language
url https://arxiv.org/abs/2601.21968