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Probing Multimodal Embeddings for Linguistic Properties: the Visual-Semantic Case

2021-02-22 15:47:04
Adam Dahlgren Lindström, Suna Bensch, Johanna Björklund, Frank Drewes

Abstract

Semantic embeddings have advanced the state of the art for countless natural language processing tasks, and various extensions to multimodal domains, such as visual-semantic embeddings, have been proposed. While the power of visual-semantic embeddings comes from the distillation and enrichment of information through machine learning, their inner workings are poorly understood and there is a shortage of analysis tools. To address this problem, we generalize the notion of probing tasks to the visual-semantic case. To this end, we (i) discuss the formalization of probing tasks for embeddings of image-caption pairs, (ii) define three concrete probing tasks within our general framework, (iii) train classifiers to probe for those properties, and (iv) compare various state-of-the-art embeddings under the lens of the proposed probing tasks. Our experiments reveal an up to 12% increase in accuracy on visual-semantic embeddings compared to the corresponding unimodal embeddings, which suggest that the text and image dimensions represented in the former do complement each other.

Abstract (translated)

URL

https://arxiv.org/abs/2102.11115

PDF

https://arxiv.org/pdf/2102.11115.pdf


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