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MAPO: Advancing Multilingual Reasoning through Multilingual Alignment-as-Preference Optimization

About

Though reasoning abilities are considered language-agnostic, existing LLMs exhibit inconsistent reasoning abilities across different languages, e.g., reasoning in the dominant language like English is superior to other languages due to the imbalance of multilingual training data. To enhance reasoning abilities in non-dominant languages, we propose a Multilingual-Alignment-as-Preference Optimization framework (MAPO), aiming to align the reasoning processes in other languages with the dominant language. Specifically, we harness an off-the-shelf translation model for the consistency between answers in non-dominant and dominant languages, which we adopt as the preference for optimization, e.g., Direct Preference Optimization (DPO) or Proximal Policy Optimization (PPO). Experiments show that MAPO stably achieves significant improvements in the multilingual reasoning of various models on all three benchmarks (MSVAMP +16.2%, MGSM +6.1%, and MNumGLUESub +13.3%), with improved reasoning consistency across languages.

Shuaijie She, Wei Zou, Shujian Huang, Wenhao Zhu, Xiang Liu, Xiang Geng, Jiajun Chen• 2024

Related benchmarks

TaskDatasetResultRank
Mathematical ReasoningMATH500 (test)
Accuracy76.2
895
Multilingual Mathematical ReasoningMGSM (test)
Accuracy71.3
109
Mathematical ReasoningMGSM (test)
Accuracy (ZH)59.6
80
Mathematical ReasoningMATH500 1.0 (test)
Accuracy61.2
57
Mathematical ReasoningMGSM
Accuracy (Bn)51.6
49
Math ReasoningMSVAMP (test)
Average Accuracy77.7
45
Factual KnowledgeGlobal MMLU-Lite
Seen Accuracy58.3
21
General performance assessmentOverall Combined Benchmarks
Performance (Seen Data)48.76
21
Math ReasoningmGSM v2
Accuracy (Seen)76.67
21
Open-ended generationCARE-pro
Score (Seen)17.69
21
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