Проектування системи автоматизованого генерування віршованих творів

dc.citation.epage14
dc.citation.issue2
dc.citation.journalTitleУкраїнський журнал інформаційних технологій
dc.citation.spage1
dc.citation.volume3
dc.contributor.affiliationНаціональний університет “Львівська політехніка”
dc.contributor.affiliationLviv Polytechnic National University
dc.contributor.authorДяк, Т. П.
dc.contributor.authorГрицюк, Юрій Іванович
dc.contributor.authorDiak, T. P.
dc.contributor.authorHrytsiuk, Yu. I.
dc.coverage.placenameЛьвів
dc.coverage.placenameLviv
dc.date.accessioned2024-03-27T07:28:24Z
dc.date.available2024-03-27T07:28:24Z
dc.date.created2021-02-28
dc.date.issued2021-02-28
dc.description.abstractРозглянуто особливості проектування системи автоматизованого генерування віршованих творів, що відкриває нові можливості художнього мовлення та сфери шоу-бізнесу, насамперед підготовки віршів і пісень. Доволі часто тексти пісень без особливого змісту стають успішними через відсутність складних сюжетів, а також через ненав'язливість і легкість їхнього сприйняття слухачами. Проаналізовано відомі літературні джерела та наявні програмні продукти, які можуть генерувати віршовані твори, поєднуючи різні методи та алгоритми. Встановлено, що жоден з них не здатен забезпечити змістовність і унікальність віршованого твору водночас, тим більше українською мовою. Проаналізовано наявні підходи до генерування віршованих творів, серед яких актуальними є метод на підставі шаблонів, генерування та тестування, еволюційні алгоритми та метод на підставі конкретних випадків. Досліджено особливості генерування віршованих творів, насамперед правила римування, види строф, віршовані ритми та розміри. Розроблено підхід до автоматизованого генерування віршованих творів з використанням еволюційних алгоритмів і методу на підставі конкретних випадків. Їхнє поєднання нагадує послідовність дій для творчих особистостей під час створення віршів або написання текстів пісень. Розглянуто особливості організації нейронної мережі для автоматизованого генерування віршованих творів. Запропоновано навчання нейронної мережі виконати за методом зворотного поширення та з використанням генетичного алгоритму. Проаналізовано принцип роботи алгоритмів пошуку оптимальних рішень, які містять такі послідовні етапи як ініціалізацію, оцінювання рішень, відбір популяцій, еволюцію рішень. Детально досліджено їхню взаємодію та різні можливості для навчання нейронної мережі. Розроблено алгоритм, за яким програмний додаток буде аналізувати запропоновані користувачем віршовані твори та генерувати нові його варіанти на підставі отриманих від нейронної мережі логічно зв'язаних слів чи рядків куплета вірша. Користувач може вносити правки як до складових вірша, так і до згенерованих віршованих творів, і в такий спосіб може навчати нейронну мережу. Розроблено специфікацію вимог до програмного додатку, визначено основні вимоги до користувацького інтерфейсу, а також встановлено потенційні класи користувачів, які будуть його використовувати.
dc.description.abstractFeatures of designing a system of automated generation of poetic works, which opens up new opportunities for artistic speech and show business, especially the preparation of poems and songs have been considered. Quite often lyrics without special content become successful due to the lack of complex plots, as well as due to the unobtrusiveness and ease of perception by listeners. Well-known literature sources and available software products that can generate poetic works by combining different methods and algorithms are analyzed. It has been established that none of them is able to ensure the content and uniqueness of the poetic work at the same time, especially in the Ukrainian language. The existing approaches to the generation of poetic works are analysed, among which the relevant is a method based on templates, generation and testing, evolutionary algorithms and the method based on specific cases. Peculiarities of generating poetical works, first of all rhyming rules, types of strophes, poetic rhythms and sizes have been investigated. An approach to automated generation of poetic works using evolutionary algorithms and a method based on specific cases have been developed. Their combination resembles a sequence of actions for creative personalities when creating poems or writinglyrics. eculiarities of neural network organization for automated generation of poetic works have been considered. It is proposed to perform neural network training using the method of inverse propagation and using a genetic algorithm. The principle of operation of algorithms for finding optimal solutions which contain such consecutive stages as initialization, evaluation of solutions, population selection, evolution of solutions, is analysed. Their interaction and various opportunities for neural network learning have been investigated in detail. An algorithm has been developed according to which the software application will analyse the poetic works offered by the user and generate new variants of it on the basis received from the neural network of logically connected words or lines of the verse in the poem. The user can edit both the components of the poem and the generated poetic works, and thus can train the neural network. The specification of requirements to the software application has been developed, the basic requirements to the user interface are defined, and also potential classes of users who will use it are established.
dc.format.extent1-14
dc.format.pages14
dc.identifier.citationДяк Т. П. Проектування системи автоматизованого генерування віршованих творів / Т. П. Дяк, Ю. І. Грицюк // Український журнал інформаційних технологій. — Львів : Видавництво Львівської політехніки, 2021. — Том 3. — № 2. — С. 1–14.
dc.identifier.citationenDiak T. P. Design of the system of automated generation of poetry works / T. P. Diak, Yu. I. Hrytsiuk // Ukrainian Journal of Information Technology. — Lviv : Lviv Politechnic Publishing House, 2021. — Vol 3. — No 2. — P. 1–14.
dc.identifier.issn2707-1898
dc.identifier.urihttps://ena.lpnu.ua/handle/ntb/61530
dc.language.isouk
dc.publisherВидавництво Львівської політехніки
dc.publisherLviv Politechnic Publishing House
dc.relation.ispartofУкраїнський журнал інформаційних технологій, 2 (3), 2021
dc.relation.ispartofUkrainian Journal of Information Technology, 2 (3), 2021
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dc.rights.holder© Національний університет “Львівська політехніка”, 2021
dc.subjectкомп'ютерна лінгвістика
dc.subjectштучний інтелект
dc.subjectнейронна мережа
dc.subjectгенетичний алгоритм
dc.subjectоптимальне рішення
dc.subjectcomputational linguistics
dc.subjectArtificial Intelligence
dc.subjectneural network
dc.subjectgenetic algorithm
dc.subjectoptimal solution
dc.titleПроектування системи автоматизованого генерування віршованих творів
dc.title.alternativeDesign of the system of automated generation of poetry works
dc.typeArticle

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