@inbook{c16a2059975d4a97a801b3e8c4c65b3f,
title = "Building a type II fuzzy qualitative regression model",
abstract = "The qualitative regression analysis models quantitatively change in the qualitative object variables by using qualitative values of multivariate data (membership degree or type I fuzzy set), which are given by subjective recognitions and judgments. From fuzzy set-theoretical points of view, uncertainty also exists when associated with the membership function of a type I fuzzy set. It will have much impact on the fuzziness of the qualitative objective external criterion. This paper is trying to model the qualitative change of external criterion's fuzziness by applying type II fuzzy set (we will use type II fuzzy set as well as type II fuzzy data in this paper). Here, qualitative values are assumed to be fuzzy degree of membership in qualitative categories and qualitative change in the objective external criterion is given as the fuzziness of the output.",
keywords = "Linear programming, LP, Quantification, Type I fuzzy number, Type I fuzzy set, Type II fuzzy number, Type II fuzzy qualitative regression model, Type II fuzzy set",
author = "Yicheng Wei and Junzo Watada",
year = "2012",
doi = "10.1007/978-3-642-29977-3_15",
language = "English",
isbn = "9783642299766",
volume = "15",
series = "Smart Innovation, Systems and Technologies",
pages = "145--154",
booktitle = "Smart Innovation, Systems and Technologies",
}