Секс или смартфон? – Анализ связи между проблемным использованием смартфона и сексуальной активностью на основе однородных и неоднородных идентификаторов и алгоритмов машинного обучения

2

Аннотация

Цель. Исследование взаимосвязи между проблемным использованием смартфонов (ПИС) и снижением сексуальной активности пользователей в офлайне.
Контекст и актуальность. Смартфоны как повсеместное технологическое достижение изменили общественный ландшафт, внедрившись в различные аспекты жизни людей и усугубив физическую и эмоциональную зависимость от них. Более 50% пользователей продолжают пользоваться смартфонами, несмотря на их негативное влияние на повседневную жизнь, что свидетельствует об эскалации ПИС. В данном исследовании изучается связь ПИС с сексуальной активностью в офлайне среди людей среднего возраста.
Дизайн исследования. Репрезентативная выборка 2023 года была проанализирована с использованием однородных (Two-NN) и неоднородных (HIDALGO) оценок размерности идентификации наряду с алгоритмами машинного обучения для изучения связи между ПИС и сексуальной активностью пользователей вне сети.
Участники. В исследовании использовались данные телефонного опроса, проведенного среди 1005 человек с учетом пола, образования, уровня дохода и типа поселения.
Методы (инструменты). Данные охватывают экономические, социально-демографические показатели и связанные с зависимостью аспекты использования смартфонов. Ключевая переменная оценивала предпочтения между использованием мобильного телефона и сексуальным контактом. Результаты. Почти половина участников отдала предпочтение использованию смартфона перед сексуальной активностью в офлайне. Анализ показал сложную связь между индивидуальными и социальными аспектами ПИС и сочетанием социально-экономических факторов, выявив два значимых раздела, существенно влияющих на сексуальную активность: ПИС на индивидуальном уровне и ПИС, обозначенный в рамках социальных отношений.
Выводы. Полученные нами результаты свидетельствуют о значительной корреляции между ПИС и снижением сексуальной активности в офлайне, при этом социально-экономические переменные также играют важную роль. Исследование подчеркивает необходимость дальнейшего изучения влияния ПИС на сексуальную активность в офлайне, отмечая важность как личностных, так и социально-психологических аспектов использования смартфона.

Общая информация

Ключевые слова: проблемное использование смартфонов, сексуальная активность, однородные и неоднородные идентификаторы, машинное обучение

Рубрика издания: Эмпирические исследования

Тип материала: научная статья

DOI: https://doi.org/10.17759/sps.2024150208

Получена: 31.01.2024

Принята в печать:

Для цитаты: Гоштоньи М. Секс или смартфон? – Анализ связи между проблемным использованием смартфона и сексуальной активностью на основе однородных и неоднородных идентификаторов и алгоритмов машинного обучения // Социальная психология и общество. 2024. Том 15. № 2. С. 117–139. DOI: 10.17759/sps.2024150208

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Информация об авторах

Гоштоньи Мартон, PhD, старший преподаватель, Малайский университет, Куала-Лумпур, Малайзия, ORCID: https://orcid.org/0000-0003-1887-4913, e-mail: gosztonyi.marton@gmail.com

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