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A fuzzy approach to discriminant analysis based on polynomial regression models

机译:基于多项式回归模型的模糊判别分析方法

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摘要

The dissimilarity among the combined units in common classification techniques leads to consider the opportunity of assigning each of them to more than a single group with different degrees of membership. In this paper, we propose a discriminant analysis structured by regressing such degrees on the classification variables. In particular, we show that even the sum of the estimated degrees of membership equals one for every unit. Polynomial regression models are actually more appropriate than linear ones, as the rate of increase or decrease of each dependent variable can vary depending on the values assumed by the independent variables; the order of the polynomial is to be chosen so as to ensure both the homogeneity within clusters and the parsimony of the entire regression model. The reliability of our proposal is showed in an applicative case, concerning the entrepreneurial propensity of the provinces in Central and Southern Italy.
机译:通用分类技术中组合单元之间的差异导致考虑将它们中的每个单元分配给多个具有不同隶属度的组的机会。在本文中,我们提出了通过对分类变量进行回归分析来构造判别分析。特别是,我们表明,即使估计的隶属度之和也等于每个单元一个。多项式回归模型实际上比线性模型更合适,因为每个因变量的增加或减少的速率可以根据自变量假设的值而变化;选择多项式的顺序,以确保簇内的同质性和整个回归模型的简约性。我们的建议的可靠性在一个适用案例中得到了证明,该案例涉及意大利中部和南部各省的创业倾向。

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