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2014 | 14 | 2 | 7-18

Article title

Application Of Rating Scale Model In Conversion Of Rating Scales' Points To The Form Of Triangular Fuzzy Numbers

Title variants

Languages of publication

EN

Abstracts

EN
A new application of fuzzy sets theory in social and economic research is a fuzzy measurement of respondents' opinions. In the subject literature fuzzy rating scales or fuzzy conversion scales are being applied. In this second case, a key stage is a choice of such parameters' values of fuzzy numbers which will best illustrate the perception of linguistic values constituting points of measurement scales. In the construction of fuzzy conversion scales the item response theory models can find an application. The transformation method of verbal categories to the form of triangular fuzzy numbers with the application of rating scale model was proposed in this article. Usefulness of a suggested approach was introduced on the basis of the analysis of selected research results on inhabitants' quality of life in one of the Lower Silesian Voivodship districts. The analysis results showed big ambiguity of particular verbal categories and, in consequence, the validity of fuzzy conversion scales application.

Publisher

Year

Volume

14

Issue

2

Pages

7-18

Physical description

Dates

published
2014-12-01
received
2014-07-05
accepted
2014-12-01
online
2015-06-03

Contributors

  • Wrocław University of Economics, Faculty of Economics, Management and Tourism, Department of Econometrics and Computer Science, Nowowiejska 3, 58-500 Jelenia Góra, Poland

References

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  • Liu, X., Zeng, X., Xu, Y. & Koehl, L. (2008). A fuzzy model of customer satisfaction index in e-commerce. Mathematics and Computers in Simulation, 77 (5–6), 512-521. DOI: 10.1016/j.matcom.2007.11.017.[Crossref]
  • Ostini, R. & Nering, M. (2006). Polytomous Item Response Theory Models. Thousand Oaks: Sage Publications.
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Document Type

Publication order reference

Identifiers

YADDA identifier

bwmeta1.element.doi-10_1515_foli-2015-0010
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