Petrasova, S. V.Khairova, N. F.Lewoniewski, WłodzimierzMamyrbayev, OrkenMukhsina, Kuralay2020-05-222020-05-222018Similar Text Fragments Extraction for Identifying Common Wikipedia Communities / S. Petrasova [et al.] // Data. – 2018. – Vol. 3, iss. 4. – 9 p.https://repository.kpi.kharkov.ua/handle/KhPI-Press/46382Similar text fragments extraction from weakly formalized data is the task of natural language processing and intelligent data analysis and is used for solving the problem of automatic identification of connected knowledge fields. In order to search such common communities in Wikipedia, we propose to use as an additional stage a logical-algebraic model for similar collocations extraction. With Stanford Part-Of-Speech tagger and Stanford Universal Dependencies parser, we identify the grammatical characteristics of collocation words. WithWordNet synsets, we choose their synonyms. Our dataset includes Wikipedia articles from different portals and projects. The experimental results show the frequencies of synonymous text fragments inWikipedia articles that form common information spaces. The number of highly frequented synonymous collocations can obtain an indication of key common up-to-date Wikipedia communities.eninformation extractionshort text fragment similarityWikipedia communitiesNLPSimilar Text Fragments Extraction for Identifying Common Wikipedia CommunitiesArticlehttps://orcid.org/0000-0001-6011-135X