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Hauptverfasser: Nguyen, Ngoc-Hieu, Shojaee, Parshin, Nguyen, Phuc Minh, Zhang, Nan, Reddy, Chandan K, Doan, Khoa D, Zhang, Rui
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.17026
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author Nguyen, Ngoc-Hieu
Shojaee, Parshin
Nguyen, Phuc Minh
Zhang, Nan
Reddy, Chandan K
Doan, Khoa D
Zhang, Rui
author_facet Nguyen, Ngoc-Hieu
Shojaee, Parshin
Nguyen, Phuc Minh
Zhang, Nan
Reddy, Chandan K
Doan, Khoa D
Zhang, Rui
contents Recent progress in large language models has led to the emergence of reasoning models, which have shown strong performance on complex tasks through specialized fine-tuning procedures. While these methods reliably improve pass@1 accuracy, prior works have observed that they show a coverage shrinkage behavior, where pass@k degrades relative to the base model. In this paper, we investigate the reasoning shrinkage arise under SFT-based post-training. We hypothesize that this behavior is driven by properties of the fine-tuning data, specifically related to decision points or "forks in the road" scenarios where model faces indecipherable patterns with multiple valid reasoning paths. To test this hypothesis, we design controlled case studies that simulate such decision-point settings, spanning indecipherable nodes in graph branching, and reasoning modes. By tracking post-training dynamics in these settings, we find that the shrinkage phenomenon is tightly correlated with the prevalence of decision-point scenarios in the training data. We also demonstrate that this shrinkage behavior can be partially mitigated through targeted data synthesis design of decision-points, and a more systematic diversity-encouraging decoding mechanism. Our findings identify data-centric factors as a key driver of shrinkage in reasoning models and highlight diversity-aware designs as an effective lever for controlling it.
format Preprint
id arxiv_https___arxiv_org_abs_2605_17026
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Why Do Reasoning Models Lose Coverage? The Role of Data and Forks in the Road
Nguyen, Ngoc-Hieu
Shojaee, Parshin
Nguyen, Phuc Minh
Zhang, Nan
Reddy, Chandan K
Doan, Khoa D
Zhang, Rui
Machine Learning
Recent progress in large language models has led to the emergence of reasoning models, which have shown strong performance on complex tasks through specialized fine-tuning procedures. While these methods reliably improve pass@1 accuracy, prior works have observed that they show a coverage shrinkage behavior, where pass@k degrades relative to the base model. In this paper, we investigate the reasoning shrinkage arise under SFT-based post-training. We hypothesize that this behavior is driven by properties of the fine-tuning data, specifically related to decision points or "forks in the road" scenarios where model faces indecipherable patterns with multiple valid reasoning paths. To test this hypothesis, we design controlled case studies that simulate such decision-point settings, spanning indecipherable nodes in graph branching, and reasoning modes. By tracking post-training dynamics in these settings, we find that the shrinkage phenomenon is tightly correlated with the prevalence of decision-point scenarios in the training data. We also demonstrate that this shrinkage behavior can be partially mitigated through targeted data synthesis design of decision-points, and a more systematic diversity-encouraging decoding mechanism. Our findings identify data-centric factors as a key driver of shrinkage in reasoning models and highlight diversity-aware designs as an effective lever for controlling it.
title Why Do Reasoning Models Lose Coverage? The Role of Data and Forks in the Road
topic Machine Learning
url https://arxiv.org/abs/2605.17026