IGLUE: A Benchmark for Transfer Learning across Modalities, Tasks, and Languages

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  • IGLUE

    Final published version, 1.79 MB, PDF document

Reliable evaluation benchmarks designed for replicability and comprehensiveness have driven progress in machine learning. Due to the lack of a multilingual benchmark, however, vision-and-language research has mostly focused on English language tasks. To fill this gap, we introduce the Image-Grounded Language Understanding Evaluation benchmark. IGLUE brings together{—}by both aggregating pre-existing datasets and creating new ones{—}visual question answering, cross-modal retrieval, grounded reasoning, and grounded entailment tasks across 20 diverse languages. Our benchmark enables the evaluation of multilingual multimodal models for transfer learning, not only in a zero-shot setting, but also in newly defined few-shot learning setups. Based on the evaluation of the available state-of-the-art models, we find that translate-test transfer is superior to zero-shot transfer and that few-shot learning is hard to harness for many tasks. Moreover, downstream performance is partially explained by the amount of available unlabelled textual data for pretraining, and only weakly by the typological distance of target{–}source languages. We hope to encourage future research efforts in this area by releasing the benchmark to the community.
Original languageEnglish
Title of host publicationProceedings of the 39th International Conference on Machine Learning
PublisherPMLR
Publication date2022
Pages2370-2392
Publication statusPublished - 2022
Event39th International Conference on Machine
Learning (ICML 2022)
- Baltimore, MD, United States
Duration: 17 Jul 202223 Jul 2022

Conference

Conference39th International Conference on Machine
Learning (ICML 2022)
LandUnited States
ByBaltimore, MD
Periode17/07/202223/07/2022
SeriesProceedings of Machine Learning Research
Volume162
ISSN1938-7228

ID: 339325236