Big Data analytics ontology

The object of this research is the Big Data (BD) analysis processes. One of the most problematic places is the lack of a clear classification of BD analysis methods, the presence of which will greatly facilitate the selection of an optimal and efficient algorithm for analyzing these data depending o...

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Main Authors: Vasyl Lytvyn, Victoria Vysotska, Oleh Veres, Oksana Brodyak, Oksana Oryshchyn
Format: Article
Language:English
Published: PC Technology Center 2017-12-01
Series:Tehnologìčnij Audit ta Rezervi Virobnictva
Subjects:
Online Access:http://journals.uran.ua/tarp/article/view/123612
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spelling doaj-3f5f4f9e4f744603b7e27915a1031f9b2020-11-25T01:28:34ZengPC Technology CenterTehnologìčnij Audit ta Rezervi Virobnictva2226-37802312-83722017-12-0112(39)162710.15587/2312-8372.2018.123612123612Big Data analytics ontologyVasyl Lytvyn0Victoria Vysotska1Oleh Veres2Oksana Brodyak3Oksana Oryshchyn4Lviv Polytechnic National University, 12, S. Bandery str., Lvіv, Ukraine, 79013Lviv Polytechnic National University, 12, S. Bandery str., Lvіv, Ukraine, 79013Lviv Polytechnic National University, 12, S. Bandery str., Lvіv, Ukraine, 79013Lviv Polytechnic National University, 12, S. Bandery str., Lvіv, Ukraine, 79013Lviv Polytechnic National University, 12, S. Bandery str., Lvіv, Ukraine, 79013The object of this research is the Big Data (BD) analysis processes. One of the most problematic places is the lack of a clear classification of BD analysis methods, the presence of which will greatly facilitate the selection of an optimal and efficient algorithm for analyzing these data depending on their structure. In the course of the study, Data Mining methods, Technologies Tech Mining, MapReduce technology, data visualization, other technologies and analysis techniques were used. This allows to determine their main characteristics and features for constructing a formal analysis model for Big Data. The rules for analyzing Big Data in the form of an ontological knowledge base are developed with the aim of using it to process and analyze any data. A classifier for forming a set of Big Data analysis rules has been obtained. Each BD has a set of parameters and criteria that determine the methods and technologies of analysis. The very purpose of BD, its structure and content determine the techniques and technologies for further analysis. Thanks to the developed ontology of the knowledge base of BD analysis with Protégé 3.4.7 and the set of RABD rules built in them, the process of selecting the methodologies and technologies for further analysis is shortened and the analysis of the selected BD is automated. This is due to the fact that the proposed approach to the analysis of Big Data has a number of features, in particular ontological knowledge base based on modern methods of artificial intelligence. Thanks to this, it is possible to obtain a complete set of Big Data analysis rules. This is possible only if the parameters and criteria of a specific Big Data are analyzed clearly.http://journals.uran.ua/tarp/article/view/123612Big Data analysis ontologyvisualization datadata miningText MiningMapReduce
collection DOAJ
language English
format Article
sources DOAJ
author Vasyl Lytvyn
Victoria Vysotska
Oleh Veres
Oksana Brodyak
Oksana Oryshchyn
spellingShingle Vasyl Lytvyn
Victoria Vysotska
Oleh Veres
Oksana Brodyak
Oksana Oryshchyn
Big Data analytics ontology
Tehnologìčnij Audit ta Rezervi Virobnictva
Big Data analysis ontology
visualization data
data mining
Text Mining
MapReduce
author_facet Vasyl Lytvyn
Victoria Vysotska
Oleh Veres
Oksana Brodyak
Oksana Oryshchyn
author_sort Vasyl Lytvyn
title Big Data analytics ontology
title_short Big Data analytics ontology
title_full Big Data analytics ontology
title_fullStr Big Data analytics ontology
title_full_unstemmed Big Data analytics ontology
title_sort big data analytics ontology
publisher PC Technology Center
series Tehnologìčnij Audit ta Rezervi Virobnictva
issn 2226-3780
2312-8372
publishDate 2017-12-01
description The object of this research is the Big Data (BD) analysis processes. One of the most problematic places is the lack of a clear classification of BD analysis methods, the presence of which will greatly facilitate the selection of an optimal and efficient algorithm for analyzing these data depending on their structure. In the course of the study, Data Mining methods, Technologies Tech Mining, MapReduce technology, data visualization, other technologies and analysis techniques were used. This allows to determine their main characteristics and features for constructing a formal analysis model for Big Data. The rules for analyzing Big Data in the form of an ontological knowledge base are developed with the aim of using it to process and analyze any data. A classifier for forming a set of Big Data analysis rules has been obtained. Each BD has a set of parameters and criteria that determine the methods and technologies of analysis. The very purpose of BD, its structure and content determine the techniques and technologies for further analysis. Thanks to the developed ontology of the knowledge base of BD analysis with Protégé 3.4.7 and the set of RABD rules built in them, the process of selecting the methodologies and technologies for further analysis is shortened and the analysis of the selected BD is automated. This is due to the fact that the proposed approach to the analysis of Big Data has a number of features, in particular ontological knowledge base based on modern methods of artificial intelligence. Thanks to this, it is possible to obtain a complete set of Big Data analysis rules. This is possible only if the parameters and criteria of a specific Big Data are analyzed clearly.
topic Big Data analysis ontology
visualization data
data mining
Text Mining
MapReduce
url http://journals.uran.ua/tarp/article/view/123612
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AT victoriavysotska bigdataanalyticsontology
AT olehveres bigdataanalyticsontology
AT oksanabrodyak bigdataanalyticsontology
AT oksanaoryshchyn bigdataanalyticsontology
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