Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing 2023
DOI: 10.18653/v1/2023.emnlp-main.431
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ZGUL: Zero-shot Generalization to Unseen Languages using Multi-source Ensembling of Language Adapters

Vipul Rathore,
Rajdeep Dhingra,
Parag Singla
et al.

Abstract: We tackle the problem of zero-shot crosslingual transfer in NLP tasks via the use of language adapters (LAs). Most of the earlier works have explored training with adapter of a single source (often English), and testing either using the target LA or LA of another related language. Training target LA requires unlabeled data, which may not be readily available for low resource unseen languages: those that are neither seen by the underlying multilingual language model (e.g., mBERT), nor do we have any (labeled or… Show more

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