رتبهبندی واحدهای تصمیمگیرنده با استفاده از کارایی متقاطع در حضور خروجیهای نامطلوب و عدم قطعیت دادهها
الموضوعات :
1 - 1) گروه مدیریت، مرکز تحقیق در عملیات و اقتصاد، دانشگاه کاتولیک لوون، لوون لنو، بلژیک
2) گروه ریاضی، واحد اردبیل، دانشگاه آزاد اسلامی، اردبیل، ایران
الکلمات المفتاحية: Data Envelopment Analysis, Cross efficiency, Ranking, Uncertainty, Undesirable outputs,
ملخص المقالة :
کارایی متقاطع یک ابزار سودمند برای رتبهبندی واحدهای تصمیمگیرنده (DMU) در تحلیل پوششی دادها (DEA) میباشد. اما از انجا که ممکن است در ارزیابی DMUها وزنهای بهینه منحصر بفرد نباشد لذا انتخاب یکی از آنها کار سادهای نخواهد بود و ممکن است نتایج حاصل از جوابهای بهینه دگرین، متفاوت باشد. برای این منظور، در این مقاله، روشی برای رتبه بندی DMUها که مشکل غیر یکتایی را ندارد، ارایه میشود. از آنجا که خروجیها به دوصورت مطلوب و نامطلوب به کار میروند. پس ارایه مدلهایی برای رتبهبندی واحدهای تصمیمگیرنده در حضور خروجیهای مطلوب ونامطلوب حایز اهمیت است. ازطرفی مدلهای DEA کلاسیک بادادههای قطعی سروکار دارد. ولی دردنیای واقعی، لزوماً همه دادهها قطعی نمیباشند. در نتیجه، به دنبال رویکردی هستیم که کارایی DMU را در شرایط عدم قطعیت محاسبه کند. لذا واحدهای تصمیمگیرنده باخروجیهای مطلوب ونا مطلوب بازهای رتبهبندی میشوند. برای رویارویی با این مسئله، یک کران پایین و یک کران بالا برای کارایی براساس رویکرد بازهای پیشنهاد میشود. نتایج حاصل در یک مثال عددی ساده مورد تحلیل قرار میگیرد.
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