Is continuous {CoT} better suited for multi-lingual reasoning?

We investigate whether performing reasoning in a continuous latent space leads to more robust multilingual capabilities. We compare Continuous Chain-of-Thought (using the {CODI} framework) against standard supervised fine-tuning across five typologically diverse languages: English, Chinese, German, French, and Urdu. Our experiments on {GSM}8k and {CommonsenseQA} demonstrate that continuous reasoning significantly outperforms explicit reasoning on low-resource languages, particularly in zero-shot settings where the target language was not seen during training. Additionally, this approach achieves extreme efficiency, compressing reasoning traces by approximately $29\times$ to $50\times$. These findings indicate that continuous latent representations naturally exhibit greater language invariance, offering a scalable solution for cross-lingual reasoning.

  • Published in:
    arXiv
  • Type:
    Article
  • Authors:
    Bashir, Ali Hamza; Shomali, Behzad; Frey, Markus; Ali, Mehdi; Sifa, Rafet; Berghaus, David
  • Year:
    2026
  • Source:
    http://arxiv.org/abs/2603.08177

Citation information

Bashir, Ali Hamza; Shomali, Behzad; Frey, Markus; Ali, Mehdi; Sifa, Rafet; Berghaus, David: Is continuous {CoT} better suited for multi-lingual reasoning?, arXiv, 2026, {arXiv}:2603.08177, March, http://arxiv.org/abs/2603.08177, Bashir.etal.2026a,

Associated Lamarr Researchers

Photo. Portrait of Mehdi Ali.

Dr. Mehdi Ali

Lead Scientist Foundation Models NLP to the profile
Prof. Dr. Rafet Sifa

Prof. Dr. Rafet Sifa

Principal Investigator Hybrid ML to the profile
Photo. Portrait of David Berghaus.

Dr. David Berghaus

Postdoctoral Researcher NLP to the profile