Application of 5D world map system to large news-article database for realizing context-diversity-responsive semantic associative search

Shiori Sasaki, Yasushi Kiyoki, Hanako Fujioka, Toshihiro Watanabe, Kyohei Otsuka, Masayuki Ishii

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

This paper presents an application of 5D World Map System with Context-Diversity-Responsive Semantic Associative Search for a large database of environmental news articles. By applying 5D World Map System to data describing social and natural phenomena, a new news-article subscription environment is realized by the dynamic combination of various semantic, temporal and spatial 'context'. The new subscription environment enables to create, accumulate and visualize a series of analyzed results of semantic relations among phenomena as an interpreted social story. The system realizes the extraction of correlative and causal relations between phenomena which are potentially included in news articles. A semantic associative search method is applied to this system for realizing the concept that 'semantics' of words, documents, and events/phenomena vary according to the 'context'. The main feature of this system is to create various context-dependent patterns of social stories according to user's viewpoints and the diversity of context in phenomena dynamically. This system also provides an environment for analyzing the time-series change and spatial expansion of social and natural phenomena on a time-series multi-geographical space. In this paper, we show a prototype system applied for vast ten years of news-articles and several experiments about 'global warming' to clarify the feasibility of the system.

Original languageEnglish
Title of host publicationInformation Modelling and Knowledge Bases XXX
EditorsTatiana Endrjukaite, Hannu Jaakkola, Alexander Dudko, Yasushi Kiyoki, Bernhard Thalheim, Naofumi Yoshida
PublisherIOS Press
Pages276-292
Number of pages17
ISBN (Electronic)9781614999324
DOIs
Publication statusPublished - 2019 Jan 1

Publication series

NameFrontiers in Artificial Intelligence and Applications
Volume312
ISSN (Print)0922-6389

Fingerprint

Semantics
Time series
Global warming
Experiments

Keywords

  • Big Data
  • Climate Change
  • Document Database
  • Environmental Research
  • Global Warming
  • News articles
  • Newspaper
  • Semantic Computing
  • Semantic Search
  • Spatiotemporal
  • Text Analysis
  • Text Processing
  • Visualization

ASJC Scopus subject areas

  • Artificial Intelligence

Cite this

Sasaki, S., Kiyoki, Y., Fujioka, H., Watanabe, T., Otsuka, K., & Ishii, M. (2019). Application of 5D world map system to large news-article database for realizing context-diversity-responsive semantic associative search. In T. Endrjukaite, H. Jaakkola, A. Dudko, Y. Kiyoki, B. Thalheim, & N. Yoshida (Eds.), Information Modelling and Knowledge Bases XXX (pp. 276-292). (Frontiers in Artificial Intelligence and Applications; Vol. 312). IOS Press. https://doi.org/10.3233/978-1-61499-933-1-276

Application of 5D world map system to large news-article database for realizing context-diversity-responsive semantic associative search. / Sasaki, Shiori; Kiyoki, Yasushi; Fujioka, Hanako; Watanabe, Toshihiro; Otsuka, Kyohei; Ishii, Masayuki.

Information Modelling and Knowledge Bases XXX. ed. / Tatiana Endrjukaite; Hannu Jaakkola; Alexander Dudko; Yasushi Kiyoki; Bernhard Thalheim; Naofumi Yoshida. IOS Press, 2019. p. 276-292 (Frontiers in Artificial Intelligence and Applications; Vol. 312).

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Sasaki, S, Kiyoki, Y, Fujioka, H, Watanabe, T, Otsuka, K & Ishii, M 2019, Application of 5D world map system to large news-article database for realizing context-diversity-responsive semantic associative search. in T Endrjukaite, H Jaakkola, A Dudko, Y Kiyoki, B Thalheim & N Yoshida (eds), Information Modelling and Knowledge Bases XXX. Frontiers in Artificial Intelligence and Applications, vol. 312, IOS Press, pp. 276-292. https://doi.org/10.3233/978-1-61499-933-1-276
Sasaki S, Kiyoki Y, Fujioka H, Watanabe T, Otsuka K, Ishii M. Application of 5D world map system to large news-article database for realizing context-diversity-responsive semantic associative search. In Endrjukaite T, Jaakkola H, Dudko A, Kiyoki Y, Thalheim B, Yoshida N, editors, Information Modelling and Knowledge Bases XXX. IOS Press. 2019. p. 276-292. (Frontiers in Artificial Intelligence and Applications). https://doi.org/10.3233/978-1-61499-933-1-276
Sasaki, Shiori ; Kiyoki, Yasushi ; Fujioka, Hanako ; Watanabe, Toshihiro ; Otsuka, Kyohei ; Ishii, Masayuki. / Application of 5D world map system to large news-article database for realizing context-diversity-responsive semantic associative search. Information Modelling and Knowledge Bases XXX. editor / Tatiana Endrjukaite ; Hannu Jaakkola ; Alexander Dudko ; Yasushi Kiyoki ; Bernhard Thalheim ; Naofumi Yoshida. IOS Press, 2019. pp. 276-292 (Frontiers in Artificial Intelligence and Applications).
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