Authors
Denis Lukovnikov, Asja Fischer, Jens Lehmann, Sören Auer
Publication date
2017/4/3
Book
Proceedings of the 26th international conference on World Wide Web
Pages
1211-1220
Description
Question Answering (QA) systems over Knowledge Graphs (KG) automatically answer natural language questions using facts contained in a knowledge graph. Simple questions, which can be answered by the extraction of a single fact, constitute a large part of questions asked on the web but still pose challenges to QA systems, especially when asked against a large knowledge resource. Existing QA systems usually rely on various components each specialised in solving different sub-tasks of the problem (such as segmentation, entity recognition, disambiguation, and relation classification etc.). In this work, we follow a quite different approach: We train a neural network for answering simple questions in an end-to-end manner, leaving all decisions to the model. It learns to rank subject-predicate pairs to enable the retrieval of relevant facts given a question. The network contains a nested word/character-level …
Total citations
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Scholar articles
D Lukovnikov, A Fischer, J Lehmann, S Auer - Proceedings of the 26th international conference on …, 2017