Logit Arithmetic Elicits Long Reasoning Capabilities Without Training
Abstract
Large reasoning models exhibit long chain-of-thought reasoning with complex strategies such as backtracking and self-verification. Yet, these capabilities typically require resource-intensive post-training. We investigate whether such behaviors can be elicited in large models without any gradient updates. To this end, we propose a decoding-time approach, ThinkLogit, which utilizes logit arithmetic to transfer these capabilities from a substantially smaller reasoning guider to a large non-reasoning target. We further show that we can boost performance by training the guider to correct the target's errors using preference optimization over mixed model outputs, a setup we refer to as ThinkLogit-DPO. We evaluate these methods across six reasoning benchmarks spanning math, science, and coding domains using the Qwen2.5-32B guided by R1-Distill-Qwen-1.5B, a model 21x smaller. Our experiments demonstrate that ThinkLogit and ThinkLogit-DPO achieve a relative improvement of 21.5% and 24.2%, respectively, over the target model. Moreover, ThinkLogit remains effective even when the guider and target come from different model families. Crucially, our method requires zero training for the large model and would incur minimal inference overhead when logits are computed in parallel, presenting a practical solution for enabling long reasoning at scale.
Cite
@article{arxiv.2510.09354,
title = {Logit Arithmetic Elicits Long Reasoning Capabilities Without Training},
author = {Yunxiang Zhang and Muhammad Khalifa and Lechen Zhang and Xin Liu and Ayoung Lee and Xinliang Frederick Zhang and Farima Fatahi Bayat and Lu Wang},
journal= {arXiv preprint arXiv:2510.09354},
year = {2026}
}
Comments
Accepted to ACL Findings 2026