9f924629-ee22-42ce-81af-5cb16135495d20210208110308535wseamdt@crossref.orgMDT DepositWSEAS TRANSACTIONS ON BUSINESS AND ECONOMICS1109-952610.37394/23207http://wseas.org/wseas/cms.action?id=4016211202021120201710.37394/23207.2020.17http://wseas.org/wseas/cms.action?id=23182Comparative Analysis of Financial Network Topology for the Russian, Chinese and US Stock MarketsVladimirBalashSaratov State University, Faculty of Mechanics and Mathematics, RUSSIAN FEDERATIONSergeiSidorovSaratov State University, Risk Institute, RUSSIAN FEDERATIONAlexeyFaizlievSaratov State University, Risk Institute, RUSSIAN FEDERATIONAlfiaChekmarevaSaratov State University, Risk Institute, RUSSIAN FEDERATIONAlexeyGrigorievSaratov State University, Faculty of Mechanics and Mathematics, RUSSIAN FEDERATIONDmitriyMelnichukSaratov State University, Faculty of Mechanics and Mathematics, RUSSIAN FEDERATIONThis paper studies the properties of the Russian stock market by employing the data-driven science and network approaches. 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