Back to Search Start Over

A Chinese Multi-type Complex Questions Answering Dataset over Wikidata

Authors :
Zou, Jianyun
Yang, Min
Zhang, Lichao
Xu, Yechen
Pan, Qifan
Jiang, Fengqing
Qin, Ran
Wang, Shushu
He, Yifan
Huang, Songfang
Zhao, Zhou
Publication Year :
2021

Abstract

Complex Knowledge Base Question Answering is a popular area of research in the past decade. Recent public datasets have led to encouraging results in this field, but are mostly limited to English and only involve a small number of question types and relations, hindering research in more realistic settings and in languages other than English. In addition, few state-of-the-art KBQA models are trained on Wikidata, one of the most popular real-world knowledge bases. We propose CLC-QuAD, the first large scale complex Chinese semantic parsing dataset over Wikidata to address these challenges. Together with the dataset, we present a text-to-SPARQL baseline model, which can effectively answer multi-type complex questions, such as factual questions, dual intent questions, boolean questions, and counting questions, with Wikidata as the background knowledge. We finally analyze the performance of SOTA KBQA models on this dataset and identify the challenges facing Chinese KBQA.<br />Comment: 8 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2111.06086
Document Type :
Working Paper