A probabilistically entropic mechanism of topical clusterisation along with thematic annotation for evolution analysis of meaningful social information of internet sources


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详细

An approach to monitoring temporal evolution of thematic clusters with evaluating their relations on base of probability and entropy methods is presented. It allows to get a temporary map of nested topics with their short annotations, concerning a predetermined main theme. The methods of semantic analysis of texts to generate topics and to find the most emotive of them to reflect a social significance are used. The technology word2vec was implemented to determine the relation of topics and evaluate their proximity to the main theme.

To increase the usability the visualization of nested topics is realized on base of a WEB interface. The proposed approach complements well the popular software for analyzing big volumes of data such as Elasticsearch (search for thematically similar documents). Results of case study of analyzing the theme “AEROFLOT” on base of news corpus which consists of 3 million messages is presented.

作者简介

D. Gydovskikh

National Research Center Kurchatov Institute

编辑信件的主要联系方式.
Email: dmitrygagus@gmail.com
俄罗斯联邦, Moscow

I. Moloshnikov

National Research Center Kurchatov Institute

Email: dmitrygagus@gmail.com
俄罗斯联邦, Moscow

A. Naumov

National Research Center Kurchatov Institute; National Research Nuclear University MEPhI

Email: dmitrygagus@gmail.com
俄罗斯联邦, Moscow; Moscow

R. Rybka

National Research Center Kurchatov Institute; Moscow Technological University (MIREA)

Email: dmitrygagus@gmail.com
俄罗斯联邦, Moscow; Moscow

A. Sboev

National Research Center Kurchatov Institute; National Research Nuclear University MEPhI; Moscow Technological University (MIREA); Plekhanov Russian University of Economics

Email: dmitrygagus@gmail.com
俄罗斯联邦, Moscow; Moscow; Moscow; Moscow

A. Selivanov

National Research Center Kurchatov Institute

Email: dmitrygagus@gmail.com
俄罗斯联邦, Moscow


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