A Comparative Analyze Based On EATWOS and OCRA Methods For Supplier Evaluation

In the conditions of increasing competition, the methods of evaluating and selecting suppliers which are one of the mostimportant part of the supply chains have gained importance for the companies. To evaluate the potential or current suppliers,applying quantitative analysis can be helpful for the company management. In this paper, efficiencies of suppliers are evaluatedwith EATWOS (Efficiency Analysis Technique With Output Satisficing) and OCRA (Operational Competitiveness RAting) methods.The ranking of the suppliers are determined based on their efficiency scores then the obtained results are compared.

Tedarikçi Değerlendirmesinde EATWOS ve OCRA Yöntemlerine Dayalı Karşılaştırmalı Bir Analiz

Artan rekabet koşullarında, tedarik zincirinin en önemli parçalarından biri olan tedarikçileri değerlendirme ve seçme yöntemleri şirketler için önem kazanmıştır. Potansiyel veya mevcut tedarikçileri değerlendirmek için, nicel analizlerin uygulanması şirket yönetimine yardımcı olabilir. Bu yazıda, tedarikçilerin verimliliği EATWOS ve OCRA yöntemleri ile değerlendirilmiştir. Tedarikçilerin sıralaması verimlilik puanlarına göre belirlenmiş ve elde edilen sonuçlar karşılaştırılmıştır.

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