README.md
January 2, 2026 · View on GitHub
When Reasoning Meets Its Laws
Junyu Zhang ∗
Yifan Sun
∗
Tianang Leng
∗
Jingyan Shen
∗
Liu Ziyin 
†
Paul Pu Liang
†
Huan Zhang †
University of Illinois Urbana-Champaign
Massachusetts Institute of Technology
University of Pennsylvania
New York University
NTT Research
∗ Equal contribution † Equal mentorship
🚀 News
- [2025/11] LoRe was selected as a Best Paper Nomination at the NeurIPS 2025 Workshop on Efficient Reasoning.
🏠 About
Despite the superior performance of Large Reasoning Models (LRMs), their reasoning behaviors are often counterintuitive, leading to suboptimal reasoning capabilities.
We present the Laws of Reasoning (LoRe), a unified framework that characterizes intrinsic reasoning patterns in LRMs. LoRe introduces the compute law with the supplementary accuracy law, examined through two properties: monotonicity and compositionality. LoRe-Bench, our proposed benchmark, systematically measures these two tractable properties for LRMs. To address the compositionality gap observed in existing models, we develop an effective finetuning approach that enforces compute-law compositionality.
As a comprehensive study from theoretical hypotheses to empirical validation, we advance a theoretical perspective grounded in human reasoning for improving reasoning in LRMs. We hope LoRe can inspire more potential strategies that guide models toward their optimal paradigms of thinking.
🚧 Code release under construction — stay tuned! 🚧
Model Zoo
Our SFT-Compo models are available on Hugging Face 🤗.
| Model | Size | SFT Data | Checkpoint |
|---|---|---|---|
| SFT-Compo | 1.5B | deepscaler-14b-min | SFT-Compo-Distill-Qwen-1.5B |
| SFT-Compo | 7B | deepscaler-14b-min | SFT-Compo-Distill-Qwen-7B |
| SFT-Compo | 8B | deepscaler-14b-min | SFT-Compo-Distill-Llama-8B |
Contact
If you have any questions related to the code or the paper, feel free to email Junyu Zhang (junyuz6@illinois.edu).
Citation
If you find our work useful in your research, please consider citing LoRe:
@article{LoRe25,
title={When Reasoning Meets Its Laws},
author={Zhang, Junyu and Sun, Yifan and Leng, Tianang and Shen, Jingyan and Ziyin, Liu and Liang, Paul Pu and Zhang, Huan},
journal={arXiv preprint arXiv:2512.17901},
year={2025}
}