To main content

On Enhancing Visual Query Building over KGs Using Query Logs

Abstract

Knowledge Graphs have recently gained a lot of attention and have been successfully applied in both academia and industry. Since KGs may be very large: they may contain millions of entities and triples relating them to each other, to classes, and assigning them data values, it is important to provide endusers with effective tools to explore information encapsulated in KGs. In this work we present a visual query system that allows users to explore KGs by intuitively constructing tree-shaped conjunctive queries. It is known that systems of this kind suffer from the problem of information overflow: when constructing a query the users have to iteratively choose from a potentially very long list of options, sich as, entities, classes, and data values, where each such choice corresponds to an extension of the query new filters. In order to address this problem we propose an approach to substantially reduce such lists with the help of ranking and by eliminating the so-called deadends, options that yield queries with no answers over a given KG.
Read publication

Category

Academic article

Client

  • EC/H2020 / 780247

Language

English

Author(s)

  • Vidar Norstein Klungre
  • Ahmet Soylu
  • Martin Giese
  • Arild Waaler
  • Evgeny Kharlamov

Affiliation

  • University of Oslo
  • Norwegian University of Science and Technology
  • SINTEF Digital / Sustainable Communication Technologies
  • University of Oxford

Year

2018

Published in

Lecture Notes in Computer Science (LNCS)

ISSN

0302-9743

Publisher

Springer

Volume

11341

Page(s)

77 - 85

View this publication at Cristin