کاهش تفاوت بین پروفایل وزن ها در کارایی متقاطع تصادفی
محورهای موضوعی : آمارسمیه رحمانی 1 , محسن خون سیاوش 2 , رضا کاظمی متین 3 , زهره مقدس 4
1 - گروه ریاضی، واحد قزوین، دانشگاه آزاد اسلامی، قزوین، ایران
2 - گروه ریاضی، واحد قزوین، دانشگاه آزاد اسلامی، قزوین، ایران
3 - گروه ریاضی، واحد کرج، دانشگاه آزاد اسلامی،کرج، ایران
4 - گروه ریاضی، واحد قزوین، دانشگاه آزاد اسلامی، قزوین، ایران
کلید واژه: difference between the weights, Stochastic cross-efficiency, Cross-efficiency, Data Envelopment Analysis,
چکیده مقاله :
ارزیابی کارایی متقاطع یک رویکرد موثر و در عین حال معمول برای ارزیابی کارایی واحدهای تصمیم گیرنده DMU)) در تحلیل پوششی داده ها (DEA) است. منحصر بفرد نبودن وزن ها در کارایی متقاطع ضعف بزرگی برای این روش قدرتمند است. در این مقاله روش جدیدی در انتخاب پروفایل های وزنی که در ارزیابی کارایی متقاطع تصادفی مورد استفاده قرار میگیرند، پیشنهاد داده می شود. یکی از موضوعات اصلی که در اینجا به آن پرداخته می شود دوری از وزن صفر است، زیرا استفاده از وزن صفر دلالت بر این دارد که برخی از متغیرهای مورد نظر از ارزیابی حذف شدهاند. علاوه بر اجتناب از وزنهای صفر، انتخاب وزنها طوری انجام می شود که تفاوت بین وزنها را تا جایی که ممکن است کاهش دهد. بنابراین، ایده جدید ارزیابی کارایی متقاطع تصادفی با مجموعه ی وزن های محدود شده در این مقاله است. مدل پیشنهادی، مجموعه مشترکی از وزنها را با استفاده از ایده شباهت بین وزنها استخراج می نماید. از مثالهای عددی برای تشریح روش جدید و مقایسه ی نتایج با روش های دیگر استفاده شده است.
Cross-efficiency method is a useful tool for efficiency evaluation of decision-making units in data envelopment analysis. The issue of non-uniqueness of optimal weights in the cross-efficiency evaluation has reduced the usefulness of this powerful method. This paper introduces a new method for selection of weights profiles as the secondary goal in cross-efficiency with stochastic data. The issue of zero-weight which implies the exclusion of some variables from the assessments, is also addressed in the new proposed method. The provided weights selection method also reduces the weight disparity in the achieved weights profile. In the peer-restricted stochastic cross-efficiency evaluation, the new approach guarantees that different DMUs should not attach very different weights to the same variables. As the result, a common set of weights using the idea of similarity between sets of weights is achieved in the proposed computation method. Some numerical examples are also used for illustration and comparison purposes.
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