English

MURAL: Multimodal, Multitask Retrieval Across Languages

Information Retrieval 2021-09-14 v1 Artificial Intelligence Computation and Language Machine Learning

Abstract

Both image-caption pairs and translation pairs provide the means to learn deep representations of and connections between languages. We use both types of pairs in MURAL (MUltimodal, MUltitask Representations Across Languages), a dual encoder that solves two tasks: 1) image-text matching and 2) translation pair matching. By incorporating billions of translation pairs, MURAL extends ALIGN (Jia et al. PMLR'21)--a state-of-the-art dual encoder learned from 1.8 billion noisy image-text pairs. When using the same encoders, MURAL's performance matches or exceeds ALIGN's cross-modal retrieval performance on well-resourced languages across several datasets. More importantly, it considerably improves performance on under-resourced languages, showing that text-text learning can overcome a paucity of image-caption examples for these languages. On the Wikipedia Image-Text dataset, for example, MURAL-base improves zero-shot mean recall by 8.1% on average for eight under-resourced languages and by 6.8% on average when fine-tuning. We additionally show that MURAL's text representations cluster not only with respect to genealogical connections but also based on areal linguistics, such as the Balkan Sprachbund.

Keywords

Cite

@article{arxiv.2109.05125,
  title  = {MURAL: Multimodal, Multitask Retrieval Across Languages},
  author = {Aashi Jain and Mandy Guo and Krishna Srinivasan and Ting Chen and Sneha Kudugunta and Chao Jia and Yinfei Yang and Jason Baldridge},
  journal= {arXiv preprint arXiv:2109.05125},
  year   = {2021}
}
R2 v1 2026-06-24T05:52:26.720Z