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Title: Дослідження засобів текстової аналітики для опрацювання даних про COVID-19
Other Titles: Study of text analytics capabilities for COVID-19 data processing
Authors: Довгунь, Дмитро Олегович
Dovhun, Dmytro
Affiliation: ТНТУ ім. І. Пулюя, Факультет комп’ютерно-інформаційних систем і програмної інженерії, Кафедра комп’ютерних наук, м. Тернопіль, Україна
Bibliographic description (Ukraine): Довгунь Д. О. Дослідження засобів текстової аналітики для опрацювання даних про COVID-19 : кваліфікаційна робота освітнього рівня „Бакалавр“ „122 — комп’ютерні науки“ / Д. О. Довгунь. — Тернопіль : ТНТУ, 2021. — 51 с.
Issue Date: 23-Ιου-2021
Submitted date: 9-Ιου-2021
Date of entry: 11-Ιου-2021
Country (code): UA
Place of the edition/event: ТНТУ ім. І.Пулюя, ФІС, м. Тернопіль, Україна
Supervisor: Пасічник, Володимир Володимирович
Committee members: Гащин, Надія Богданівна
UDC: 004.62
Keywords: COVID-19
COVID-19
видобування тексту
text extraction
відношення
attitudes
знання
knowledge
опрацювання природної мови
natural language processing
пошук інформації
information retrieval
узагальнення
generalization
Abstract: Кваліфікаційна робота присвячена дослідженню методів та засобів текстової аналітики для опрацювання даних про COVID-19. Метою роботи є підвищення рівня поінформованості наукової спільноти та дослідників щодо опіблікованих в предметній області COVID-19 статей. В першому розділі кваліфікаційної роботи освітнього рівня «Бакалавр» подано розлогий аналіз предметної області опрацювання текстів в галузі COVID-19. Описано основи корпусів для видобування тексту щодо COVID-19. Виявлено та проаналізовано ресурси для моделювання текстового майнінгу для COVID-19. В другому розділі кваліфікаційної роботи освітнього рівня «Бакалавр» описано системи опрацювання текстів щодо COVID-19. Досліджено пошукові текстові системи для публікацій щодо COVID-19. Проаналізовано системи опрацювання текстів щодо COVID-19 з функціями розвідки. Описано системи опрацювання текстів щодо COVID-19 спрямовані на дослідження та контроль якості джерел. Розглянуто системи узагальнення текстів щодо COVID-19. Досліджено системні огляди наукових джерел щодо COVID-19.
Qualification work is devoted to the study of methods and tools of text analytics for data processing on COVID-19. The aim of the work is to raise the level of awareness of the scientific community and researchers about the articles published in the subject area of COVID-19. The first section of the qualification work of the educational level "Bachelor" presents an extensive analysis of the subject area of word processing in the field of COVID-19. The basics of text extraction enclosures for COVID-19 are described. Resources for text mining modeling for COVID-19 have been identified and analyzed. The second section of the qualification work of the educational level "Bachelor" describes the word processing systems for COVID-19. Text search engines for publications on COVID-19 have been studied. COVID-19 word processing systems with intelligence functions are analyzed. The word processing systems for COVID-19 aimed at research and quality control of sources are described. Systems of generalization of texts concerning COVID-19 are considered. Systematic reviews of scientific sources on COVID-19 have been studied.
Content: ВСТУП 7 1 АНАЛІЗ ТЕКСТІВ У ГАЛУЗІ COVID-19. СТАН ДОСЛІДЖЕНЬ, КОРПУСИ ТА РЕСУРСИ 9 1.1 Аналіз предметної області 9 1.2 Корпуси видобування тексту щодо COVID-19 11 1.3 Ресурси для моделювання текстового майнінгу для COVID-19 13 1.4 Висновок до першого розділу 19 2 ЗАСОБИ ТЕКСТОВОЇ АНАЛІТИКИ ДЛЯ ОПРАЦЮВАННЯ ДАНИХ ПРО COVID-19 20 2.1 Системи опрацювання текстів щодо COVID-19 20 2.2 Пошукові текстові системи для публікацій щодо COVID-19 21 2.3 Системи опрацювання текстів щодо COVID-19 з функціями розвідки 23 2.4 Системи опрацювання текстів щодо COVID-19 спрямовані на дослідження та контроль якості джерел 24 2.5 Системи узагальнення текстів щодо COVID-19 26 2.6 Системні огляди наукових джерел щодо COVID-19 28 2.7 Узагальнення результатів проведених наукових розвідок щодо COVID-19 31 2.8 Висновок до другого розділу 34 3 БЕЗПЕКА ЖИТТЄДІЯЛЬНОСТІ, ОСНОВИ ХОРОНИ ПРАЦІ 35 3.1 Долікарська допомога при вивихах 35 3.2 Правила техніки безпеки при експлуатації обладнання 37 3.3 Висновок до третього розділу 39 ВИСНОВКИ 40 ПЕРЕЛІК ДЖЕРЕЛ 41 ДОДАТКИ
URI: http://elartu.tntu.edu.ua/handle/lib/35785
Copyright owner: © Довгунь Дмитро Олегович, 2021
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Content type: Bachelor Thesis
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