InfoCTM:A Mutual Information Maximization Perspective of Cross-lingual Topic Modeling

Abstract

Cross-lingual topic models have been prevalent for cross-lingual text analysis by revealing aligned latent topics. However, most existing methods suffer from producing repetitive topics that hinder further analysis and performance decline caused by low-coverage dictionaries. In this paper, we propose the Cross-lingual Topic Modeling with Mutual Information (InfoCTM). Instead of the direct alignment in previous work, we propose a topic alignment with mutual information method. This works as a regularization to properly align topics and prevent degenerate topic representations of words, which mitigates the repetitive topic issue. To address the low-coverage dictionary issue, we further propose a cross-lingual vocabulary linking method that finds more linked cross-lingual words for topic alignment beyond the translations of a given dictionary. Extensive experiments on English, Chinese, and Japanese datasets demonstrate that our method outperforms state-of-the-art baselines, producing more coherent, diverse, and well-aligned topics and showing better transferability for cross-lingual classification tasks.

Publication
AAAI Conference on Artificial Intelligence

Link: https://arxiv.org/abs/2304.03544

Liu Chaoqun
Liu Chaoqun
PhD Student
Luu Anh Tuan
Luu Anh Tuan
Assistant Professor

My research interests lie in the intersection of Artificial Intelligence and Natural Language Processing.