Managing Vagueness with Fuzzy in Hierarchical Big Data1

Daniel J. Lewis, Trevor P. Martin

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Out of the web of linked open data, comes a sense of networked “Big Data.” This large scale interconnected data is hierarchical, and often messy and full of subjective bias particularly when mass collaboration is concerned (e.g. wikipedia). In this paper we apply fuzzy set theory, specifically the X-μ approach which is shown to be more efficient than a standard fuzzy approach, to attributes within linked data. We look at hierarchical structures, using an example from the films subset of the DBpedia data repository. The hierarchical nature of film categories lends itself well to our application, and we apply fuzzy models to handle the vagueness in attributes such as film length, film budget, and box office takings.
Original languageEnglish
Title of host publicationProcedia Computer Science
Subtitle of host publicationINNS Conference on Big Data 2015 Program San Francisco, CA, USA 8-10 August 2015
PublisherElsevier
Pages19-28
Number of pages10
ISBN (Print)18770509 (ISSN)
DOIs
Publication statusPublished - 2015

Publication series

NameProcedia Computer Science
Volume53
ISSN (Print)1877-0509

Keywords

  • Big Data
  • Fuzzy Set Theory
  • Linked Data
  • Open Data
  • Semantic Web
  • X-mu Fuzzy Seta

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