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MaskLID: Code-Switching Language Identification Through Iterative Masking

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Hinrich Schütze

Prof. Dr.

Principal Investigator

Abstract

We present MaskLID, a simple, yet effective, code-switching (CS) language identification (LID) method. MaskLID does not require any training and is designed to complement current high-performance sentence-level LIDs. Sentence-level LIDs are classifiers trained on monolingual texts to provide single labels, typically using a softmax layer to turn scores into probabilities. However, in cases where a sentence is composed in both L1 and L2 languages, the LID classifier often only returns the dominant label L1. To address this limitation, MaskLID employs a strategy to mask text features associated with L1, allowing the LID to classify the text as L2 in the next round. This method uses the LID itself to identify the features that require masking and does not rely on any external resource. In this work, we explore the use of MaskLID for two open-source LIDs (GlotLID and OpenLID), that are both based on the FastText architecture.

inproceedings


ACL 2024

62nd Annual Meeting of the Association for Computational Linguistics. Bangkok, Thailand, Aug 11-16, 2024.
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A* Conference

Authors

A. H. Kargaran • F. Yvon • H. Schütze

Links

DOI GitHub

Research Area

 B2 | Natural Language Processing

BibTeXKey: KYS24a

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