Indirect membership function assignment based on ordinal regression |
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Authors: | Qing Li |
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Affiliation: | Mechanical Engineering Department, University of New Haven, West Haven, USA |
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Abstract: | In many fuzzy sets applications, fuzzy membership functions are commonly developed based on empirical or expert knowledge. The equation of a membership function is usually determined somewhat arbitrarily. This paper explores a novel membership function design method based on ordinal regression analysis. The estimated thresholds between ordinal measurement categories are applied to calculate the intersection points between fuzzy sets. These intersection points are further applied to determine the equations of the membership functions. Information distortion due to empirical guess can thus be reduced and more latent information in the fuzzy responses can therefore be captured. A case study investigating the relationship between foster mothers’ satisfaction and the foster time and information provided has been conducted in this research. The applicability and effectiveness of the proposed membership function assignment approach have been demonstrated through several case studies. |
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Keywords: | membership function design indirect membership function assignment fuzzy set intersection ordinal regression threshold estimation |
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