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    Academic Journal

    Πηγή: System Analysis in Science and Education = Sistemnyj analiz v nauke i obrazovanii; No. 3 (2012): №3 (2012); 11-36 ; Системный анализ в науке и образовании; № 3 (2012): №3 (2012); 11-36 ; 2071-9612

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    Academic Journal

    Πηγή: Relevant lines of scientific research: development prospects; № 2; 174-175 ; Актуальные направления научных исследований: перспективы развития; № 2; 174-175

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    Academic Journal

    Πηγή: Vavilov Journal of Genetics and Breeding; Том 19, № 6 (2015); 745-752 ; Вавиловский журнал генетики и селекции; Том 19, № 6 (2015); 745-752 ; 2500-3259

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    Academic Journal

    Πηγή: Visnyk of Vinnytsia Politechnical Institute; No. 3 (2016); 13-20 ; Вестник Винницкого политехнического института; № 3 (2016); 13-20 ; Вісник Вінницького політехнічного інституту; № 3 (2016); 13-20 ; 1997-9274 ; 1997-9266

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    Academic Journal

    Πηγή: Business Strategies; № 2 (2013); 76-79 ; Стратегии бизнеса; № 2 (2013); 76-79 ; 2311-7184 ; 10.17747/2311-7184-2013-2

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    Relation: https://www.strategybusiness.ru/jour/article/view/47/42; Рухлов А. Принципы портфельного инвестирования – Финансы. Ценные бумаги. -2005; Шарп У.,Александер Г., Бейли Дж. Инвестиции. – М.:Инфра-М, - 2006; http://www.finam.ru; https://www.strategybusiness.ru/jour/article/view/47; undefined

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