PA-DHK: Polarity analysis for discovering hidden knowledge

J. D. Kim, J. Son, Hoh In, S. H. Hwang, H. Lee, Doo Kwon Baik

Research output: Contribution to journalArticle

Abstract

In a Social Network Service (SNS), a large amount of data with a variety of characteristics is generated through voluntary participation of users. These data are called "Big Social Data." Big social data can identify not only content registered on the web but also the relations of the friends of users. One of the most representative studies on SNS is analysis of the characteristics of social content and social relations, because SNS users tend to add people who are in close contact with them and have similar interests to their list of friends. Finding new knowledge from these large amounts of big social data can be very useful. This paper proposes a polarity analysis method for discovering hidden knowledge based on formal concept analysis in SNSs called PA-DHK. Further, we show, via experiments, that our data analysis approach can be applied to knowledge discovery using association rules.

Original languageEnglish
Pages (from-to)2198-2208
Number of pages11
JournalScientia Iranica
Volume22
Issue number6
Publication statusPublished - 2015

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Formal concept analysis
Association rules
Data mining
Experiments

Keywords

  • Formal concept analysis
  • Knowledge discovery
  • Polarity analysis
  • Social network services
  • Twitter content

ASJC Scopus subject areas

  • Engineering(all)

Cite this

Kim, J. D., Son, J., In, H., Hwang, S. H., Lee, H., & Baik, D. K. (2015). PA-DHK: Polarity analysis for discovering hidden knowledge. Scientia Iranica, 22(6), 2198-2208.

PA-DHK : Polarity analysis for discovering hidden knowledge. / Kim, J. D.; Son, J.; In, Hoh; Hwang, S. H.; Lee, H.; Baik, Doo Kwon.

In: Scientia Iranica, Vol. 22, No. 6, 2015, p. 2198-2208.

Research output: Contribution to journalArticle

Kim, JD, Son, J, In, H, Hwang, SH, Lee, H & Baik, DK 2015, 'PA-DHK: Polarity analysis for discovering hidden knowledge', Scientia Iranica, vol. 22, no. 6, pp. 2198-2208.
Kim, J. D. ; Son, J. ; In, Hoh ; Hwang, S. H. ; Lee, H. ; Baik, Doo Kwon. / PA-DHK : Polarity analysis for discovering hidden knowledge. In: Scientia Iranica. 2015 ; Vol. 22, No. 6. pp. 2198-2208.
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