4.7 Article

Transfer language selection for zero-shot cross-lingual abusive language detection

Journal

INFORMATION PROCESSING & MANAGEMENT
Volume 59, Issue 4, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.ipm.2022.102981

Keywords

Abusive language detection; Zero-shot learning; Transfer learning; Linguistics

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This study demonstrates the effectiveness of cross-lingual transfer learning for zero-shot abusive language detection, showing that linguistic similarity is correlated with classifier performance. The research allows for the use of existing data from higher-resource languages to improve detection systems for low-resource languages.
We study the selection of transfer languages for automatic abusive language detection. Instead of preparing a dataset for every language, we demonstrate the effectiveness of cross-lingual transfer learning for zero-shot abusive language detection. This way we can use existing data from higher-resource languages to build better detection systems for low-resource languages. Our datasets are from seven different languages from three language families. We measure the distance between the languages using several language similarity measures, especially by quantifying the World Atlas of Language Structures. We show that there is a correlation between linguistic similarity and classifier performance. This discovery allows us to choose an optimal transfer language for zero shot abusive language detection.

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