Cross-lingual NER Transfer with Pretrained Language Models: Accuracy Degradation in Low-Resource Languages
Description
Multilingual Language Models (MLLMs) exhibit robust cross-lingual transfer capabilities, or the ability to leverage information acquired in a source language and apply it to a target language. These capabilities find practical applications in well-established Natural Language Processing (NLP) tasks such as Named Entity Recognition (NER). This study aims to investigate the effectiveness of a source language when applied to a target language, particularly in the context of perturbing the input test set. We evaluate on 13 pairs of languages, each including one high-resource language (HRL) and one
Research goal: What is the impact of pretraining language models on unlabeled target language data before cross-lingual NER transfer, comparing models like XLM-R and mBERT on accuracy degradation across low-resource languages in the WNUT-17 and Ontonotes benchmarks?
Autonomous synthesis report generated by Assignee Research. Tribunal consensus score: 7.8/10.
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