TempTabQA: Temporal Question Answering for Semi-Structured Tables
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下载链接:
https://zenodo.org/record/10022926
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资源简介:
This repository contains resources, namely TempTabQA, developed for the paper: Gupta, V., Kandoi, P., Vora, M., Zhang, S., He, Y., Reinanda R., Srikumar V., TempTabQA: Temporal Question Answering for Semi-Structured Tables. In: Proceeding of the The 2023 Conference on Empirical Methods in Natural Language Processing, Dec 2023.
TempTabQA is a dataset which comprises 11,454 question-answer pairs extracted from Wikipedia Infobox tables. These question-answer pairs are annotated by human annotators. We provide two test sets instead of one: the Head set with popular frequent domains, and the Tail set with rarer domains.
Files to access the annotation follow the below structure:
Maindata
qapairs: split into train, dev, head, and tail sets, in both csv and json formats
Tables: Wikipedia category and tables metadata in csv, json and html formats
Carefully read the ```LICENCE``` for non-academic usage.
Note : Wherever required consider the year of 2022 as the build date for the dataset.
创建时间:
2023-11-16



