Table and Image Generation for Investigating Knowledge of Entities in Pre-trained Vision and Language Models

Hidetaka Kamigaito, Katsuhiko Hayashi, Taro Watanabe

Main: Resources and Evaluation Main-poster Paper

Session 1: Resources and Evaluation (Virtual Poster)
Conference Room: Pier 7&8
Conference Time: July 10, 11:00-12:30 (EDT) (America/Toronto)
Global Time: July 10, Session 1 (15:00-16:30 UTC)
Keywords: corpus creation, automatic creation and evaluation of language resources, nlp datasets
TLDR: In this paper, we propose a table and image generation task to verify how the knowledge about entities acquired from natural language is retained in Vision \& Language (V \& L) models. This task consists of two parts: the first is to generate a table containing knowledge about an entity and its rela...
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Abstract: In this paper, we propose a table and image generation task to verify how the knowledge about entities acquired from natural language is retained in Vision \& Language (V \& L) models. This task consists of two parts: the first is to generate a table containing knowledge about an entity and its related image, and the second is to generate an image from an entity with a caption and a table containing related knowledge of the entity. In both tasks, the model must know the entities used to perform the generation properly. We created the Wikipedia Table and Image Generation (WikiTIG) dataset from about 200,000 infoboxes in English Wikipedia articles to perform the proposed tasks. We evaluated the performance on the tasks with respect to the above research question using the V \& L model OFA, which has achieved state-of-the-art results in multiple tasks. Experimental results show that OFA forgets part of its entity knowledge by pre-training as a complement to improve the performance of image related tasks.