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Unified Language Representation for Question Answering over Text, Tables, and Images

Authors :
Yu, Bowen
Fu, Cheng
Yu, Haiyang
Huang, Fei
Li, Yongbin
Publication Year :
2023

Abstract

When trying to answer complex questions, people often rely on multiple sources of information, such as visual, textual, and tabular data. Previous approaches to this problem have focused on designing input features or model structure in the multi-modal space, which is inflexible for cross-modal reasoning or data-efficient training. In this paper, we call for an alternative paradigm, which transforms the images and tables into unified language representations, so that we can simplify the task into a simpler textual QA problem that can be solved using three steps: retrieval, ranking, and generation, all within a language space. This idea takes advantage of the power of pre-trained language models and is implemented in a framework called Solar. Our experimental results show that Solar outperforms all existing methods by 10.6-32.3 pts on two datasets, MultimodalQA and MMCoQA, across ten different metrics. Additionally, Solar achieves the best performance on the WebQA leaderboard<br />Comment: Findings of ACL 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.16762
Document Type :
Working Paper