The SciQA Scientific Question Answering Benchmark for Scholarly Knowledge

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作者
Sören Auer
Dante A. C. Barone
Cassiano Bartz
Eduardo G. Cortes
Mohamad Yaser Jaradeh
Oliver Karras
Manolis Koubarakis
Dmitry Mouromtsev
Dmitrii Pliukhin
Daniil Radyush
Ivan Shilin
Markus Stocker
Eleni Tsalapati
机构
[1] TIB—Leibniz Information Centre for Science and Technology,L3S Research Center
[2] Leibniz University Hannover,Institute of Informatics
[3] Federal University of Rio Grande do Sul,Department of Informatics and Telecommunications
[4] National and Kapodistrian University of Athens,Laboratory of Information Science and Semantic Technologies
[5] ITMO University,undefined
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摘要
Knowledge graphs have gained increasing popularity in the last decade in science and technology. However, knowledge graphs are currently relatively simple to moderate semantic structures that are mainly a collection of factual statements. Question answering (QA) benchmarks and systems were so far mainly geared towards encyclopedic knowledge graphs such as DBpedia and Wikidata. We present SciQA a scientific QA benchmark for scholarly knowledge. The benchmark leverages the Open Research Knowledge Graph (ORKG) which includes almost 170,000 resources describing research contributions of almost 15,000 scholarly articles from 709 research fields. Following a bottom-up methodology, we first manually developed a set of 100 complex questions that can be answered using this knowledge graph. Furthermore, we devised eight question templates with which we automatically generated further 2465 questions, that can also be answered with the ORKG. The questions cover a range of research fields and question types and are translated into corresponding SPARQL queries over the ORKG. Based on two preliminary evaluations, we show that the resulting SciQA benchmark represents a challenging task for next-generation QA systems. This task is part of the open competitions at the 22nd International Semantic Web Conference 2023 as the Scholarly Question Answering over Linked Data (QALD) Challenge.
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