2021
DOI: 10.48550/arxiv.2111.01231
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Switch Point biased Self-Training: Re-purposing Pretrained Models for Code-Switching

Abstract: Code-switching (CS), a ubiquitous phenomenon due to the ease of communication it offers in multilingual communities still remains an understudied problem in language processing. The primary reasons behind this are: (1) minimal efforts in leveraging large pretrained multilingual models, and (2) the lack of annotated data. The distinguishing case of low performance of multilingual models in CS is the intra-sentence mixing of languages leading to switch points. We first benchmark two sequence labeling tasks -POS … Show more

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