CLJul 16, 2023

Cross-Lingual NER for Financial Transaction Data in Low-Resource Languages

arXiv:2307.08714v13 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses the problem of limited labeled data for NER in low-resource languages, which is crucial for developing multilingual applications in regions with mixed language use, though it is incremental as it builds on existing methods like knowledge distillation.

The paper tackles cross-lingual named entity recognition for financial transaction data in low-resource languages, achieving state-of-the-art performance with only 30 labeled samples by transferring knowledge from English to Arabic using knowledge distillation and consistency training.

We propose an efficient modeling framework for cross-lingual named entity recognition in semi-structured text data. Our approach relies on both knowledge distillation and consistency training. The modeling framework leverages knowledge from a large language model (XLMRoBERTa) pre-trained on the source language, with a student-teacher relationship (knowledge distillation). The student model incorporates unsupervised consistency training (with KL divergence loss) on the low-resource target language. We employ two independent datasets of SMSs in English and Arabic, each carrying semi-structured banking transaction information, and focus on exhibiting the transfer of knowledge from English to Arabic. With access to only 30 labeled samples, our model can generalize the recognition of merchants, amounts, and other fields from English to Arabic. We show that our modeling approach, while efficient, performs best overall when compared to state-of-the-art approaches like DistilBERT pre-trained on the target language or a supervised model directly trained on labeled data in the target language. Our experiments show that it is enough to learn to recognize entities in English to reach reasonable performance in a low-resource language in the presence of a few labeled samples of semi-structured data. The proposed framework has implications for developing multi-lingual applications, especially in geographies where digital endeavors rely on both English and one or more low-resource language(s), sometimes mixed with English or employed singly.

Foundations

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