Ekonomiczne Problemy Usług

Previously: Zeszyty Naukowe Uniwersytetu Szczecińskiego. Ekonomiczne Problemy Usług

ISSN: 1896-382X     eISSN: 2353-2866    OAI    DOI: 10.18276/epu.2017.126/2-31
CC BY-SA   Open Access   DOAJ

Issue archive / nr 126 (2) 2017
Wielowymiarowa analiza mediów społecznościowych
(Multidimentional social media analysis)

Authors: Wiesław Wolny
Uniwersytet Ekonomiczny w Katowicach
Keywords: social media social media analysis data mining teclmiques
Data publikacji całości:2017
Page range:9 (305-313)
Klasyfikacja JEL: C88
Cited-by (Crossref) ?:

Abstract

Social media has gained prominent attention in the last years. Hundreds of millions of people spending countless hours on social media to communicate, interact, share pictures and create groups of interests. Social media has become rich source of data for analysis to scientists and practitioners. Concept of multidimensional analysis of social media is presented in the article. Dimensions of analysis includes text analysis, user analysis, user networks analysis, geospatial analysis and picture analysis.
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