AdaCtrl: Towards Adaptive and Controllable Reasoning via Difficulty-Aware Budgeting
Shijue Huang, Hongru Wang, Wanjun Zhong, Zhaochen Su, Jiazhan Feng, Bowen Cao, Yi R. Fung

TL;DR
AdaCtrl is a framework that adaptively manages reasoning length based on problem difficulty and user preferences, improving efficiency and effectiveness in large reasoning models.
Contribution
It introduces a two-stage training process and explicit tags for user-controlled, difficulty-aware reasoning length adjustment in large models.
Findings
Reduces response length by up to 91% on certain datasets.
Improves performance on challenging reasoning tasks.
Enables user control over reasoning depth and efficiency.
Abstract
Modern large reasoning models demonstrate impressive problem-solving capabilities by employing sophisticated reasoning strategies. However, they often struggle to balance efficiency and effectiveness, frequently generating unnecessarily lengthy reasoning chains for simple problems. In this work, we propose AdaCtrl, a novel framework to support both difficulty-aware adaptive reasoning budget allocation and explicit user control over reasoning depth. AdaCtrl dynamically adjusts its reasoning length based on self-assessed problem difficulty, while also allowing users to manually control the budget to prioritize either efficiency or effectiveness. This is achieved through a two-stage training pipeline: an initial cold-start fine-tuning phase to instill the ability to self-aware difficulty and adjust reasoning budget, followed by a difficulty-aware reinforcement learning (RL) stage that…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Advanced Software Engineering Methodologies · Logic, Reasoning, and Knowledge
