Ekonomiczne Problemy Usług

Previously: Zeszyty Naukowe Uniwersytetu Szczecińskiego. Ekonomiczne Problemy Usług

ISSN: 1896-382X     eISSN: 2353-2866    OAI    DOI: 10.18276/epu.2017.126/2-16
CC BY-SA   Open Access   DOAJ

Issue archive / nr 126 (2) 2017
Text mining of articles in an issue of the journal „Economics and Computer Science" dedicated on the DIMBI project

Authors: Julian Vasilev
University of Economics Varn a Department of Informatics

Nataliya Marinova
D. Tsenov Academy of Economics Svishtov Department of Business Informatics
Keywords: ontology text mining Rapid Miner the DIMBI project
Data publikacji całości:2017
Page range:7 (153-159)
Klasyfikacja JEL: C45 C88
Cited-by (Crossref) ?:

Abstract

The purpose of this article is to use business intelligence techniques to analyse articles in an issue (Volume 2, Issue 5) of the journal „Economics and Computer Science". Since business intelligence methods are many, the research is limited to text mining meth­ods. The research aim is to find terminology which is common for all articles in one issue of the journal. Since the journal has published several thematic issues, it is a research que s­tions to find ontologies in each thematic issue. Rapid Miner is used as a software tool to conduct the text mining techniques. The most frequently used terms are found by Rapid Miner. A manual thematic classification of terms is done. The main groups are: educational, research and software. The proposed methodology may be used by other authors for other surveys in different thematic content.
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