Можливості Data Science в центральнах банках: огляд
a Національний банк України, Київ, Україна
Анотація

У цій статті представлено основні напрями використання алгоритму Data Science в центральних банках. Стаття містить огляд випадків використання Data Science, в тому числі для прогнозування макроекономічних і фінансових змінних, аналізу текстів (з газет, соціальних мереж та різних видів звітів), а також інших методів, які базуються або пов'язані з великими обсягами даних. Кожен з них є до певної міри важливим для центральних банків в цілому і Національного банку України зокрема. Їх застосовують для покращення формування стратегії політики, підвищення спроможності прогнозування і для інших цілей. Ця стаття сприятиме визначенню вектора дослідження у цій сфері. А також продемонструє, що популярність методів Data Science серед центральних банків з часом зростає. Крім того, у статті приділено увагу огляду досягнень Національного банк України у цій сфері.

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Стаття є перекладом з англійської. Під час цитування використовуйте оригінальну назву публікації
Цитуйте як: Krukovets, D. (2020). Data Science Opportunities at Central Banks: Overview. Visnyk of the National Bank of Ukraine, 249, 13-24. https://doi.org/10.26531/vnbu2020.249.02
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