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Hauptverfasser: Bu, Mengyu, Zhang, Shaolei, He, Zhongjun, Wu, Hua, Feng, Yang
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2509.24338
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author Bu, Mengyu
Zhang, Shaolei
He, Zhongjun
Wu, Hua
Feng, Yang
author_facet Bu, Mengyu
Zhang, Shaolei
He, Zhongjun
Wu, Hua
Feng, Yang
contents Multilingual large language models (LLMs) possess impressive multilingual understanding and generation capabilities. However, their performance and cross-lingual alignment often lag for non-dominant languages. A common solution is to fine-tune LLMs on large-scale and more balanced multilingual corpus, but such approaches often lead to imprecise alignment and suboptimal knowledge transfer, struggling with limited improvements across languages. In this paper, we propose AlignX to bridge the multilingual performance gap, which is a two-stage representation-level framework for enhancing multilingual performance of pre-trained LLMs. In the first stage, we align multilingual representations with multilingual semantic alignment and language feature integration. In the second stage, we stimulate the multilingual capability of LLMs via multilingual instruction fine-tuning. Experimental results on several pre-trained LLMs demonstrate that our approach enhances LLMs' multilingual general and cross-lingual generation capability. Further analysis indicates that AlignX brings the multilingual representations closer and improves the cross-lingual alignment.
format Preprint
id arxiv_https___arxiv_org_abs_2509_24338
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AlignX: Advancing Multilingual Large Language Models with Multilingual Representation Alignment
Bu, Mengyu
Zhang, Shaolei
He, Zhongjun
Wu, Hua
Feng, Yang
Computation and Language
Multilingual large language models (LLMs) possess impressive multilingual understanding and generation capabilities. However, their performance and cross-lingual alignment often lag for non-dominant languages. A common solution is to fine-tune LLMs on large-scale and more balanced multilingual corpus, but such approaches often lead to imprecise alignment and suboptimal knowledge transfer, struggling with limited improvements across languages. In this paper, we propose AlignX to bridge the multilingual performance gap, which is a two-stage representation-level framework for enhancing multilingual performance of pre-trained LLMs. In the first stage, we align multilingual representations with multilingual semantic alignment and language feature integration. In the second stage, we stimulate the multilingual capability of LLMs via multilingual instruction fine-tuning. Experimental results on several pre-trained LLMs demonstrate that our approach enhances LLMs' multilingual general and cross-lingual generation capability. Further analysis indicates that AlignX brings the multilingual representations closer and improves the cross-lingual alignment.
title AlignX: Advancing Multilingual Large Language Models with Multilingual Representation Alignment
topic Computation and Language
url https://arxiv.org/abs/2509.24338