

Динамика перетоков волатильности между секторами российской экономики
https://doi.org/10.32609/0042-8736-2024-12-50-68
Аннотация
Волатильность отражает существующий в экономике риск, а ее перетоки характеризуют величину рисков, передающихся от одного сектора к другому. Определена динамика перетоков волатильности между секторами российской экономики в кризисные периоды, секторы классифицированы на отдающие и принимающие шоки. Использованы данные о дневной доходности отраслевых индексов МосБиржи за 2018—2023 гг. Динамика перетоков волатильности определялась с помощью методологии Диболда-Йилмаза (Diebold—Yilmaz) на основе VAR-модели. Выявлено, что характер перетоков различается в докризисный период, в период пандемии COVID-19 и во время проведения СВО. Финансовый сектор выступает источником перетоков волатильности на протяжении первого и последнего периодов. Во время пандемии их приемниками становятся нефтегазовый и транспортный секторы. В период проведения СВО секторы металлургии и нефтехимии оказываются приемниками перетоков волатильности, а потребительских товаров и финансовый — их источниками.
Об авторах
Ю. В. КудрявцеваРоссия
Кудрявцева Юлия Владимировна - эксперт первой категории Департамента инфраструктуры финансового рынка Банка России.
Москва
А. Г. Мирзоян
Россия
Мирзоян Ашот Гамлетович - ст. преподаватель кафедры экономики инноваций экономического факультета МГУ.
Москва
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Рецензия
Для цитирования:
Кудрявцева Ю.В., Мирзоян А.Г. Динамика перетоков волатильности между секторами российской экономики. Вопросы экономики. 2024;(12):50-68. https://doi.org/10.32609/0042-8736-2024-12-50-68
For citation:
Kudryavtseva Yu.V., Mirzoyan A.G. The dynamics of volatility spillovers among Russian economy sectors. Voprosy Ekonomiki. 2024;(12):50-68. (In Russ.) https://doi.org/10.32609/0042-8736-2024-12-50-68