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рубрика "Вопросы теории и методологии"

Статистика онлайн-запросов в наукастинге миграции

Цапенко И.П., Юревич М.А.

Том 15, №1, 2022

Цапенко И.П., Юревич М.А. (2022). Статистика онлайн-запросов в наукастинге миграции // Экономические и социальные проблемы: факты, тенденции, прогноз. Т. 15. № 1. С. 74–89. DOI: 10.15838/esc.2022.1.79.4

DOI: 10.15838/esc.2022.1.79.4

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