Control Systems and Computers, N1, 2018, Article 7

DOI: https://doi.org/10.15407/usim.2018.01.071
Upr. sist. maš., 2018, Issue 1 (273), pp. 71-78.

UDK 004.89

Savchenko Mykyta N., Student (Masters), zitros.lab@gmail.com,

Kriachok Alexander S., PhD (Eng.), Associate Professor,  
alexandrkriachok@gmail.com,

National Technical University of Ukraine ‘ Igor Sikorsky Kyiv Polytechnic Institute’,  Kyiv, boulevard of Victory 37, corps 5, 03056.

AUTOMATIC GENERATION OF SEMANTIC KNOWLEDGE  NETWORKS FROM AN UNSTRUCTURED TEXT

A method and an algorithm for the semantic knowledge network automated construction created from the most informative concepts in the electronic texts are proposed. Аn analysis and comparison of existing methods with their software implementations for information research in electronic texts are presented. The results of BBC news article analysis using the proposed method are given.

Keywords: Building semantic networks, knowledge extraction, knowledge models, natural language processing

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Received 21.02.2018