On Reasoning Strength Planning in Large Reasoning Models
Leheng Sheng, An Zhang, Zijian Wu, Weixiang Zhao, Changshuo Shen, Yi Zhang, Xiang Wang, Tat-Seng Chua

TL;DR
This paper investigates how large reasoning models pre-plan their reasoning strength through internal activation vectors, revealing mechanisms that influence reasoning length and enabling applications like overthinking detection and efficient reasoning.
Contribution
It uncovers the causal role of a directional vector in model activations that controls reasoning length, providing new insights into the internal reasoning process of LRMs.
Findings
LRMs pre-allocate reasoning strength before generation
The magnitude of a directional vector modulates reasoning length
Manipulating this vector affects model performance and reasoning behavior
Abstract
Recent studies empirically reveal that large reasoning models (LRMs) can automatically allocate more reasoning strengths (i.e., the number of reasoning tokens) for harder problems, exhibiting difficulty-awareness for better task performance. While this automatic reasoning strength allocation phenomenon has been widely observed, its underlying mechanism remains largely unexplored. To this end, we provide explanations for this phenomenon from the perspective of model activations. We find evidence that LRMs pre-plan the reasoning strengths in their activations even before generation, with this reasoning strength causally controlled by the magnitude of a pre-allocated directional vector. Specifically, we show that the number of reasoning tokens is predictable solely based on the question activations using linear probes, indicating that LRMs estimate the required reasoning strength in…
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Taxonomy
TopicsMultimodal Machine Learning Applications · AI-based Problem Solving and Planning · Topic Modeling
