PAELLA: Parameter-Efficient Lightweight Language-Agnostic Captioning Model

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We introduce PAELLA, a Parameter-Efficient Lightweight Language-Agnostic image captioning model designed to be both parameter and data-efficient using retrieval augmentation. The model is trained by learning a small mapping network with 34M parameters between a pre-trained visual model and a multilingual language model that is conditioned on two types of input: (i) the image itself, and (ii) a set of retrieved captions in the target language. The retrieved examples play a key role in guiding the model to generate captions across languages. Through retrieval, the model can be lightweight in terms of the number of trainable parameters, which only exist in its mapping network, and also in the amount of multilingual training data that is required. Experiments on the XM3600 dataset, featuring 36 languages, show that PAELLA can outperform or compete against some models with 3-77× more learned parameters and 35-863× more data, particularly in low-resource languages. We also find that PAELLA can be trained on only monolingual data and still show strong zero-shot abilities in other languages.

Original languageEnglish
Title of host publicationFindings of the Association for Computational Linguistics : NAACL 2024
EditorsKevin Duh, Helena Gomez, Steven Bethard
Number of pages16
PublisherAssociation for Computational Linguistics (ACL)
Publication date2024
Pages3549-3564
ISBN (Electronic)9798891761193
Publication statusPublished - 2024
Event2024 Findings of the Association for Computational Linguistics: NAACL 2024 - Mexico City, Mexico
Duration: 16 Jun 202421 Jun 2024

Conference

Conference2024 Findings of the Association for Computational Linguistics: NAACL 2024
LandMexico
ByMexico City
Periode16/06/202421/06/2024
SponsorBaidu, CapitalOne, et al., Grammarly, Megagon Labs, Otter.ai

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Publisher Copyright:
© 2024 Association for Computational Linguistics.

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