Exploring Efficiency Frontiers of Thinking Budget in Medical Reasoning: Scaling Laws between Computational Resources and Reasoning Quality
Ziqian Bi, Lu Chen, Junhao Song, Hongying Luo, Enze Ge, Junmin Huang, Tianyang Wang, Keyu Chen, Chia Xin Liang, Zihan Wei, Huafeng Liu, Chunjie Tian, Jibin Guan, Joe Yeong, Yongzhi Xu, Peng Wang, Xinyuan Song, Junfeng Hao

TL;DR
This paper investigates how computational resources, termed thinking budgets, influence reasoning quality in medical AI models, revealing scaling laws and efficiency regimes that guide resource allocation for clinical applications.
Contribution
It provides the first comprehensive analysis of thinking budget mechanisms in medical reasoning, establishing scaling laws and identifying optimal efficiency regimes across model sizes and specialties.
Findings
Logarithmic scaling laws between resources and accuracy
Three efficiency regimes identified for different clinical needs
Smaller models benefit more from increased reasoning tokens
Abstract
This study presents the first comprehensive evaluation of thinking budget mechanisms in medical reasoning tasks, revealing fundamental scaling laws between computational resources and reasoning quality. We systematically evaluated two major model families, Qwen3 (1.7B to 235B parameters) and DeepSeek-R1 (1.5B to 70B parameters), across 15 medical datasets spanning diverse specialties and difficulty levels. Through controlled experiments with thinking budgets ranging from zero to unlimited tokens, we establish logarithmic scaling relationships where accuracy improvements follow a predictable pattern with both thinking budget and model size. Our findings identify three distinct efficiency regimes: high-efficiency (0 to 256 tokens) suitable for real-time applications, balanced (256 to 512 tokens) offering optimal cost-performance tradeoffs for routine clinical support, and high-accuracy…
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Taxonomy
TopicsImpact of AI and Big Data on Business and Society
