A revisited approach to linear fuzzy regression using trapezoidal fuzzy intervals

Information Sciences(2010)

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摘要
Conventional Fuzzy regression using possibilistic concepts allows the identification of models from uncertain data sets. However, some limitations still exist. This paper deals with a revisited approach for possibilistic fuzzy regression methods. Indeed, a new modified fuzzy linear model form is introduced where the identified model output can envelop all the observed data and ensure a total inclusion property. Moreover, this model output can have any kind of spread tendency. In this framework, the identification problem is reformulated according to a new criterion that assesses the model fuzziness independently from the collected data distribution. The potential of the proposed method with regard to the conventional approach is illustrated by simulation examples.
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关键词
observed data,uncertain data set,trapezoidal fuzzy interval,model output,data distribution,identification problem,linear fuzzy regression,conventional approach,new criterion,modified fuzzy linear model,conventional fuzzy regression,possibilistic concept,revisited approach,linear regression,linear model,model identification
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