INFOTABS: Inference on Tables as Semi-structured Data
Abstract
In this paper, we observe that semi-structured tabulated text is ubiquitous; understanding them requires not only comprehending the meaning of text fragments, but also implicit relationships between them. We argue that such data can prove as a testing ground for understanding how we reason about information. To study this, we introduce a new dataset called INFOTABS, comprising of human-written textual hypotheses based on premises that are tables extracted from Wikipedia info-boxes. Our analysis shows that the semi-structured, multi-domain and heterogeneous nature of the premises admits complex, multi-faceted reasoning. Experiments reveal that, while human annotators agree on the relationships between a table-hypothesis pair, several standard modeling strategies are unsuccessful at the task, suggesting that reasoning about tables can pose a difficult modeling challenge.
Cite
@article{arxiv.2005.06117,
title = {INFOTABS: Inference on Tables as Semi-structured Data},
author = {Vivek Gupta and Maitrey Mehta and Pegah Nokhiz and Vivek Srikumar},
journal= {arXiv preprint arXiv:2005.06117},
year = {2020}
}
Comments
16 pages, 6 figures, 14 Tables, ACL 2020, Project Page: https://infotabs.github.io/