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Main Authors: Kleinman, Michael, Trager, Matthew, Achille, Alessandro, Xia, Wei, Soatto, Stefano
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.27042
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author Kleinman, Michael
Trager, Matthew
Achille, Alessandro
Xia, Wei
Soatto, Stefano
author_facet Kleinman, Michael
Trager, Matthew
Achille, Alessandro
Xia, Wei
Soatto, Stefano
contents Increasing the thinking budget of AI models can significantly improve accuracy, but not all questions warrant the same amount of reasoning. Users may prefer to allocate different amounts of reasoning effort depending on how they value output quality versus latency and cost. To leverage this tradeoff effectively, users need fine-grained control over the amount of thinking used for a particular query, but few approaches enable such control. Existing methods require users to specify the absolute number of desired tokens, but this requires knowing the difficulty of the problem beforehand to appropriately set the token budget for a query. To address these issues, we propose Adaptive Effort Control, a self-adaptive reinforcement learning method that trains models to use a user-specified fraction of tokens relative to the current average chain-of-thought length for each query. This approach eliminates dataset- and phase-specific tuning while producing better cost-accuracy tradeoff curves compared to standard methods. Users can dynamically adjust the cost-accuracy trade-off through a continuous effort parameter specified at inference time. We observe that the model automatically learns to allocate resources proportionally to the task difficulty and, across model scales ranging from 1.5B to 32B parameters, our approach enables a 2-3x reduction in chain-of-thought length while maintaining or improving performance relative to the base model used for RL training.
format Preprint
id arxiv_https___arxiv_org_abs_2510_27042
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle e1: Learning Adaptive Control of Reasoning Effort
Kleinman, Michael
Trager, Matthew
Achille, Alessandro
Xia, Wei
Soatto, Stefano
Artificial Intelligence
Machine Learning
Increasing the thinking budget of AI models can significantly improve accuracy, but not all questions warrant the same amount of reasoning. Users may prefer to allocate different amounts of reasoning effort depending on how they value output quality versus latency and cost. To leverage this tradeoff effectively, users need fine-grained control over the amount of thinking used for a particular query, but few approaches enable such control. Existing methods require users to specify the absolute number of desired tokens, but this requires knowing the difficulty of the problem beforehand to appropriately set the token budget for a query. To address these issues, we propose Adaptive Effort Control, a self-adaptive reinforcement learning method that trains models to use a user-specified fraction of tokens relative to the current average chain-of-thought length for each query. This approach eliminates dataset- and phase-specific tuning while producing better cost-accuracy tradeoff curves compared to standard methods. Users can dynamically adjust the cost-accuracy trade-off through a continuous effort parameter specified at inference time. We observe that the model automatically learns to allocate resources proportionally to the task difficulty and, across model scales ranging from 1.5B to 32B parameters, our approach enables a 2-3x reduction in chain-of-thought length while maintaining or improving performance relative to the base model used for RL training.
title e1: Learning Adaptive Control of Reasoning Effort
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2510.27042