Leveraging Domain Context for Question Answering Over Knowledge Graph

  • Peihao Tong
  • , Qifan Zhang
  • , Junjie Yao*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

40 Scopus citations

Abstract

With the growing availability of different knowledge graphs in a variety of domains, question answering over knowledge graph (KG-QA) becomes a prevalent information retrieval approach. Current KG-QA methods usually resort to semantic parsing, search or neural matching models. However, they cannot well tackle increasingly long input questions and complex information needs. In this work, we propose a new KG-QA approach, leveraging the rich domain context in the knowledge graph. We incorporate the new approach with question and answer domain context descriptions. Specifically, for questions, we enrich them with users’ subsequent input questions within a session and expand the input question representation. For the candidate answers, we equip them with surrounding context structures, i.e., meta-paths within the targeting knowledge graph. On top of these, we design a cross-attention mechanism to improve the question and answer matching performance. An experimental study on real datasets verifies these improvements. The new approach is especially beneficial for specific knowledge graphs with complex questions.

Original languageEnglish
Pages (from-to)323-335
Number of pages13
JournalData Science and Engineering
Volume4
Issue number4
DOIs
StatePublished - 1 Dec 2019

Keywords

  • Knowledge graph
  • Meta-path
  • Question answering

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