4.7 Article

Importance-Performance Analysis by Fuzzy C-Means Algorithm

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 50, Issue -, Pages 9-16

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2015.12.023

Keywords

Importance Performance Analysis; Fuzzy clustering; Fuzzy partition; Prototype; Fuzzy C-Means Algorithm

Funding

  1. Romanian National Authority for Scientific Research, CNCS-UEFISCDI [PN-II-ID-PCE-2011-3-0861]

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Traditional Importance-Performance Analysis assumes the distribution of a given set of attributes in four sets, Keep up the good work, Concentrate here, Low priority and Possible overkill, corresponding to the four possibilities, high-high, low-high, low-low and high-low, of the pair performance-importance. This can lead to ambiguities, contradictions or non-intuitive results, especially because the most real-world classes are fuzzy rather than crisp. The fuzzy clustering is an important tool to identify the structure in data, therefore we apply the Fuzzy C-Means Algorithm to obtain a fuzzy partition of a set of attributes. A membership degree of every attribute to each of the sets mentioned above is determined, against to the forcing categorization in traditional Importance-Performance Analysis. The main benefit is related with the deriving of the managerial decisions which become more refined due to the fuzzy approach. In addition, the development priorities and the directions in which the effort of an economic or non-economic entity would be useless or even dangerous are identified on a rigorous basis and taking into account only the internal structure of the input data. (C) 2015 Elsevier Ltd. All rights reserved.

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