The technology of scientific and practical communications: InGraph case study

750,00 


Монографія

This work is licensed under CC BY 4.0

Платформа InGraph представлена як науково-практична реалізація інформаційно-технологічного продукту. Логічна, структурна, інформаційна та технологічна реалізація цієї Платформи надає корисний сервіс усім суб’єктам наукової діяльності, які створюють наукові праці та використовують їх: авторам, рецензентам, а також кінцевим користувачам, задіяним у науці та практиці. Механізми Платформи, які забезпечують взаємодію всіх її користувачів між собою, формують технологію науково-практичних комунікацій за принципом “кожен отримує те, що йому потрібно, за мінімальних часових витрат”. Така технологія, реалізована через Платформу, створює для її користувачів такі можливості: самореалізації, альтруїстичні можливості, соціальні перспективи, економічні можливості, організаційні можливості. Це дозволяє стверджувати про багатовекторність Платформи, яка створює альтернативну модель поширення наукових знань.

Концепція Платформи InGraph реалізує перехід від одновимірної моделі “вчений для вченого” або “наука для науки” до двовимірної моделі “наука для покращення добробуту людини”, тим самим акцентуючи увагу на забезпеченні практичних потреб на основі результатів досліджень як пріоритеті для науки. Такі потреби можна розглядати в контексті покращення добробуту людини. Можливості для користувачів знаходити та отримувати необхідну їм науково-практичну інформацію реалізуються завдяки розробленому принципу, що базується на трирівневому доступі до контенту.

Розроблений механізм зворотного зв’язку, реалізований на Платформі, дозволяє оцінити об’єктивність рецензентів та надає можливості для рейтингування науковців, колективів та установ, створюючи при цьому зону комфорту для користувачів наукового контенту. Він також запобігає подіям, пов’язаним з оцінюванням контенту некомпетентними користувачами, та мінімізує ризики виникнення схем змови між суб’єктами наукової діяльності.

Запропонована процедура оцінки ціни наукових робіт, що подаються авторами на основі закритого доступу, у вигляді функції від їх наукової якості та рівня наукової новизни, дозволяє реалізувати прозорість формування вартості наукового контенту. Транзакційний механізм Платформи реалізує таку систему розподілу товарів, в якій домінуюча роль відводиться авторам наукових робіт. Автори, при цьому, завжди мають можливість особисто обирати, надавати свої роботи у закритому чи відкритому доступі, без будь-якої оплати за публікацію в останньому випадку.

Ключові слова: інформаційно-технологічна платформа InGraph; науково-практичні комунікації; учасники; науковий контент; якість наукового контенту; ефективність наукової діяльності; механізм зворотного зв’язку для оцінки якості; капіталізація наукових робіт

Автор

Dmytro Domin, Dimitri Lunin, Olena Domina, Anton Komyshan, Kristina Veski Saparali, Vitalii Osadchyi

DOI

https://doi.org/10.21303/978-9916-9516-9-9

ISBN (online):

978-9916-9850-0-7

ISBN (print):

978-9916-9516-9-9

ISBN (epub):

978-9916-9850-1-4

Видавець

Scientific Route OÜ

Мова

англійська

Вид видання

Монографії

Рік видання

Сторінки

184

Формат

60×84/16

Науковий напрям

Computer sciences, Technical sciences, Комп'ютерні науки, Технічні науки

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