Conference article

Establishing Metrics for Kansei Responses: An Approach Using the Rasch Model

Fabio Camargo
University of Leeds, School of Mechanical Engineering, UK

Brian Henson
University of Leeds, School of Mechanical Engineering, UK

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Published in: KEER2014. Proceedings of the 5th Kanesi Engineering and Emotion Research; International Conference; Linköping; Sweden; June 11-13

Linköping Electronic Conference Proceedings 100:49, p. 585-594

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Published: 2014-06-11

ISBN: 978-91-7519-276-5

ISSN: 1650-3686 (print), 1650-3740 (online)

Abstract

Although qualitative comparisons are necessarily part of the process to elicit users’ kansei responses to products; they are insufficient to provide a more fine-grained interpretation of users’ interaction; which can require a measurement system. However; kansei variables cannot be measured directly. Data obtained from kansei responses need to be transformed by statistical methods and meet measurement assumptions. An approach to validate the quantitative structure of kansei scales is the application of Rasch measurement theory. The Rasch model; which is referred to as a family of probabilistic models; provides mechanisms to test the hypothesis that the observations meet the assumptions for establishing a quantitative structure. In this paper a number of procedures in Rasch modelling are outlined. Different examples from empirical applications using some techniques of kansei engineering show that the establishment of measures for comparisons between individuals and between stimulus objects is not a trivial matter.

Keywords

Kansei Engineering; Kansei Measurement; Rasch Model; Validation

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