A Comparative Evaluation of Visual and Natural Language Question Answering Over Linked Data
July 19, 2019 Β· Declared Dead Β· π International Conference on Knowledge Engineering and Ontology Development
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Authors
Gerhard Wohlgenannt, Dmitry Mouromtsev, Dmitry Pavlov, Yury Emelyanov, Alexey Morozov
arXiv ID
1907.08501
Category
cs.IR: Information Retrieval
Cross-listed
cs.CL
Citations
3
Venue
International Conference on Knowledge Engineering and Ontology Development
Last Checked
4 months ago
Abstract
With the growing number and size of Linked Data datasets, it is crucial to make the data accessible and useful for users without knowledge of formal query languages. Two approaches towards this goal are knowledge graph visualization and natural language interfaces. Here, we investigate specifically question answering (QA) over Linked Data by comparing a diagrammatic visual approach with existing natural language-based systems. Given a QA benchmark (QALD7), we evaluate a visual method which is based on iteratively creating diagrams until the answer is found, against four QA systems that have natural language queries as input. Besides other benefits, the visual approach provides higher performance, but also requires more manual input. The results indicate that the methods can be used complementary, and that such a combination has a large positive impact on QA performance, and also facilitates additional features such as data exploration.
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