Efficient Reasoning with Balanced Thinking
arXiv cs.AI / 3/16/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The paper identifies overthinking and underthinking as bottlenecks for large reasoning models, limiting efficiency and accuracy in resource-constrained settings.
- It proposes ReBalance, a training-free framework that uses confidence dynamics to detect problematic reasoning and constructs a steering vector from reasoning mode prototypes to guide progress.
- A dynamic control function modulates the steering vector in real time to prune redundant steps during overthinking and encourage exploration during underthinking, improving robustness.
- Extensive experiments show ReBalance works across models from 0.5B to 32B and nine benchmarks in math, general QA, and coding tasks, with reduced output redundancy and improved accuracy.
- The method is plug-and-play for deployment, and code is available at the linked GitHub repository.
Related Articles
How AI is Transforming Dynamics 365 Business Central
Dev.to
Algorithmic Gaslighting: A Formal Legal Template to Fight AI Safety Pivots That Cause Psychological Harm
Reddit r/artificial
Do I need different approaches for different types of business information errors?
Dev.to
ShieldCortex: What We Learned Protecting AI Agent Memory
Dev.to
How AI-Powered Revenue Intelligence Transforms B2B Sales Teams
Dev.to