Subject Areas : Applied Economics
میثم بشیری 1 , سیدحسین پاریاب 2
1 - کارشناسی ارشد مدیریت اجرایی، پژوهشگر موسسه مطالعات و پژوهشهای بارگانی (نویسنده مسئول).
2 - دانشجوی دکترا تجارت الکترونیکی، پژوهشگر موسسه مطالعات و پژوهشهای بارگانی
Keywords:
Abstract :
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