Abstract

Malcolm Baldrige National Quality Award (MBNQA) is a broadly used performance excellence framework to recognize organizations that have outstanding customer-focused processes. MBNQA system is based on an assessment system using a 0–1000 points scale. However, experts prefer making linguistic assessments rather than exact numerical assignments. Fuzzy set theory presents excellent tools and techniques to capture the vagueness and impreciseness in these assessments. This paper develops a new analytic hierarchy process (AHP)-based fuzzy multi-criteria decision-making approach to measure the performance excellence of firms applying for MBNQA. The proposed approach enables experts to use seven different fuzzy scales to evaluate firms using the MBNQA criteria. These fuzzy scales involve both positive fuzzy numbers and negative fuzzy numbers, and present an easier and efficient alternative to the calculations made in pairwise comparison matrices. In this way, the experts filling in a questionnaire can easily understand the reciprocal scale and establish comparison matrices. Using negative fuzzy numbers in AHP scale is the crucial point of this paper. To show the applicability of the method, a numerical example composed of a four-level hierarchy including seven main criteria, 18 sub-criteria, and three alternatives is also given. We use Buckley’s Fuzzy AHP approach for comparative analysis. Our application reveals that the proposed fuzzy AHP approach efficiently measures the quality performance of the firms applying to MBNQA.

Highlights

  • Commercial organizations should enhance their competitive edge through continuous improvement to survive in competitive markets [32]

  • The aim of this paper is to develop a new and more practical scale and an analytic hierarchy process (AHP) method under fuzziness to assess the firms applying for Malcolm Baldrige National Quality Award (MBNQA)

  • 55% of the criteria in MBNQA are related to how an organization should be run and the remaining 45% of the criteria focus on the achieved results

Read more

Summary

Introduction

Commercial organizations should enhance their competitive edge through continuous improvement to survive in competitive markets [32]. The aim of the award is to increase the quality awareness in firms and to recognize the success in productivity improvement Another award is the Canada Award for Excellence introduced by the Ministry of Industry in 1984 and it was revised in 1989 to consider the assessment criteria of Malcolm Baldrige Model. Aydın and Kahraman [1] developed a new fuzzy AHP method using positive and negative fuzzy numbers They illustrated its application for a supplier selection problem. The aim of this paper is to develop a new and more practical scale and an AHP method under fuzziness to assess the firms applying for MBNQA. We allow experts to use negative fuzzy numbers in pairwise comparison matrices and modify the normalization method of the classical AHP using a simple normalization formula to get the priority weights.

Literature review
Findings
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call