Crosslingual Reasoning through Test-Time Scaling
By: Zheng-Xin Yong , M. Farid Adilazuarda , Jonibek Mansurov and more
Potential Business Impact:
Computers can solve math problems in many languages.
Reasoning capabilities of large language models are primarily studied for English, even when pretrained models are multilingual. In this work, we investigate to what extent English reasoning finetuning with long chain-of-thoughts (CoTs) can generalize across languages. First, we find that scaling up inference compute for English-centric reasoning language models (RLMs) improves multilingual mathematical reasoning across many languages including low-resource languages, to an extent where they outperform models twice their size. Second, we reveal that while English-centric RLM's CoTs are naturally predominantly English, they consistently follow a quote-and-think pattern to reason about quoted non-English inputs. Third, we discover an effective strategy to control the language of long CoT reasoning, and we observe that models reason better and more efficiently in high-resource languages. Finally, we observe poor out-of-domain reasoning generalization, in particular from STEM to cultural commonsense knowledge, even for English. Overall, we demonstrate the potentials, study the mechanisms and outline the limitations of crosslingual generalization of English reasoning test-time scaling. We conclude that practitioners should let English-centric RLMs reason in high-resource languages, while further work is needed to improve reasoning in low-resource languages and out-of-domain contexts.
Similar Papers
Scaling Test-time Compute for Low-resource Languages: Multilingual Reasoning in LLMs
Computation and Language
Helps computers reason in any language.
Long Chain-of-Thought Reasoning Across Languages
Computation and Language
Helps computers reason in many languages.
Towards Thinking-Optimal Scaling of Test-Time Compute for LLM Reasoning
Computation and Language
Makes AI smarter by teaching it when to think less.