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استناد به این مقاله: یادگاری، حسین، محمدی، تیمور، آماده، حمید، قاسمی، عبدالرسول، مصطفایی، حمیدرضا. (1399). پیشبینی قیمت نفت خام برنت با ترکیب تکنیکهای مبتنی بر تئوری خاکستری و اقتصادسنجی، پژوهشنامه اقتصاد انرژی ایران، 36 (9)، 149-171.
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