Elisa Ricci
2024
Retrieval-enriched zero-shot image classification in low-resource domains
Nicola Dall’Asen
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Yiming Wang
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Enrico Fini
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Elisa Ricci
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Low-resource domains, characterized by scarce data and annotations, present significant challenges for language and visual understanding tasks, with the latter much under-explored in the literature. Recent advancements in Vision-Language Models (VLM) have shown promising results in high-resource domains but fall short in low-resource concepts that are under-represented (e.g. only a handful of images per category) in the pre-training set. We tackle the challenging task of zero-shot low-resource image classification from a novel perspective. By leveraging a retrieval-based strategy, we achieve this in a training-free fashion. Specifically, our method, named CoRE (Combination of Retrieval Enrichment), enriches the representation of both query images and class prototypes by retrieving relevant textual information from large web-crawled databases. This retrieval-based enrichment significantly boosts classification performance by incorporating the broader contextual information relevant to the specific class. We validate our method on a newly established benchmark covering diverse low-resource domains, including medical imaging, rare plants, and circuits. Our experiments demonstrate that CoRE outperforms existing state-of-the-art methods that rely on synthetic data generation and model fine-tuning.
2015
Online Multitask Learning for Machine Translation Quality Estimation
José G. C. de Souza
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Matteo Negri
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Elisa Ricci
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Marco Turchi
Proceedings of the 53rd Annual Meeting of the Association for Computational Linguistics and the 7th International Joint Conference on Natural Language Processing (Volume 1: Long Papers)
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Co-authors
- Nicola Dall’Asen 1
- Yiming Wang 1
- Enrico Fini 1
- José G. C. De Souza 1
- Matteo Negri 1
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