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Main Authors: Ding, Dongyi, Wang, Tiannan, Zhu, Chenghao, Tao, Meiling, Jiang, Yuchen Eleanor, Zhou, Wangchunshu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.01887
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author Ding, Dongyi
Wang, Tiannan
Zhu, Chenghao
Tao, Meiling
Jiang, Yuchen Eleanor
Zhou, Wangchunshu
author_facet Ding, Dongyi
Wang, Tiannan
Zhu, Chenghao
Tao, Meiling
Jiang, Yuchen Eleanor
Zhou, Wangchunshu
contents Large language models (LLMs) excel at reasoning tasks requiring long thought sequences for planning, reflection, and refinement. However, their substantial model size and high computational demands are impractical for widespread deployment. Yet, small language models (SLMs) often struggle to learn long-form CoT reasoning due to their limited capacity, a phenomenon we refer to as the "SLMs Learnability Gap". To address this, we introduce \textbf{Mi}d-\textbf{Co}T \textbf{T}eacher \textbf{A}ssistant Distillation (MiCoTAl), a framework for improving long CoT distillation for SLMs. MiCoTA employs intermediate-sized models as teacher assistants and utilizes intermediate-length CoT sequences to bridge both the capacity and reasoning length gaps. Our experiments on downstream tasks demonstrate that although SLMs distilled from large teachers can perform poorly, by applying MiCoTA, they achieve significant improvements in reasoning performance. Specifically, Qwen2.5-7B-Instruct and Qwen2.5-3B-Instruct achieve an improvement of 3.47 and 3.93 respectively on average score on AIME2024, AMC, Olympiad, MATH-500 and GSM8K benchmarks. To better understand the mechanism behind MiCoTA, we perform a quantitative experiment demonstrating that our method produces data more closely aligned with base SLM distributions. Our insights pave the way for future research into long-CoT data distillation for SLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2507_01887
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publishDate 2025
record_format arxiv
spellingShingle MiCoTA: Bridging the Learnability Gap with Intermediate CoT and Teacher Assistants
Ding, Dongyi
Wang, Tiannan
Zhu, Chenghao
Tao, Meiling
Jiang, Yuchen Eleanor
Zhou, Wangchunshu
Computation and Language
Large language models (LLMs) excel at reasoning tasks requiring long thought sequences for planning, reflection, and refinement. However, their substantial model size and high computational demands are impractical for widespread deployment. Yet, small language models (SLMs) often struggle to learn long-form CoT reasoning due to their limited capacity, a phenomenon we refer to as the "SLMs Learnability Gap". To address this, we introduce \textbf{Mi}d-\textbf{Co}T \textbf{T}eacher \textbf{A}ssistant Distillation (MiCoTAl), a framework for improving long CoT distillation for SLMs. MiCoTA employs intermediate-sized models as teacher assistants and utilizes intermediate-length CoT sequences to bridge both the capacity and reasoning length gaps. Our experiments on downstream tasks demonstrate that although SLMs distilled from large teachers can perform poorly, by applying MiCoTA, they achieve significant improvements in reasoning performance. Specifically, Qwen2.5-7B-Instruct and Qwen2.5-3B-Instruct achieve an improvement of 3.47 and 3.93 respectively on average score on AIME2024, AMC, Olympiad, MATH-500 and GSM8K benchmarks. To better understand the mechanism behind MiCoTA, we perform a quantitative experiment demonstrating that our method produces data more closely aligned with base SLM distributions. Our insights pave the way for future research into long-CoT data distillation for SLMs.
title MiCoTA: Bridging the Learnability Gap with Intermediate CoT and Teacher Assistants
topic Computation and Language
url https://arxiv.org/abs/2507.01887