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首页> 外文期刊>IEEJ Transactions on Electrical and Electronic Engineering >Design of a qualitative classification model through fuzzy support vector machine with type-2 fuzzy expected regression classifier preset
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Design of a qualitative classification model through fuzzy support vector machine with type-2 fuzzy expected regression classifier preset

机译:通过模糊支持向量机的设计定性分类模型,具有2型模糊预期回归分类器预设

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摘要

Methods of qualitative analysis, such as qualitative classification, have gained importance as an essential complement of existing quantitative analysis in numerous fields. Only a few models have been developed to deal with qualitative inputs in the form of type-2 fuzzy(T2F) sets properly, given that traditional defuzzification method like the Karnik-Mendel algorithm performs dimensionality reduction at the cost of loss of information. To improve the situation, we define the expected value and variance of T2F set in this paper. By using a combination of them, we transfer the vertical three-dimensional uncertainty of T2F set to horizontal range uncertainty without much distortion of information. Additionally, current classification models are unsuitable to the partial classification problem if an output is not fully assigned to a single class. We build a comprehensive qualitative classification model based on fuzzy support vector machine (FSVM) combined with type-2 fuzzy expected regression (FER) to solve the partial classification problem as mentioned. This classifier (i.e. FER-FSVM) makes it possible to achieve the discrimination of output while characterizing membership for each class in terms of multidimensional qualitative inputs (attributes) in the form of T2F sets. FER-FSVM also can self-learn the data structure and shift between FER or FSVM for classification automatically, thus largely improving the efficiency of the classification process. The new model is almost 7 times more efficient than FSVM, as shown by our empirical experiments. (c) 2016 Institute of Electrical Engineers of Japan. Published by John Wiley & Sons, Inc.
机译:定性分析的方法,例如定性分类,已成为许多领域中现有定量分析的重要补充。只有少数模型以2型模糊(T2F)的形式处理定性输入,因为鉴于传统的Defuzzification方法(例如Karnik-Mendel算法)以损失信息的成本而降低了维度降低。为了改善情况,我们定义了本文中T2F设置的预期价值和差异。通过使用它们的组合,我们将设置的T2F的垂直三维不确定性转移到水平范围的不确定性,而没有太大的信息失真。此外,如果未完全分配到单个类,当前分类模型不适合部分分类问题。我们基于模糊支持向量机(FSVM)与2型模糊预期回归(FER)建立了一个全面的定性分类模型,以解决所述部分分类问题。此分类器(即FER-FSVM)使得在每个类以多维定性输入(属性)以T2F集的形式以多维定性输入(属性)来表征输出的歧视。 FER-FSVM还可以自动学习数据结构并在FER或FSVM之间自动移动,从而在很大程度上提高了分类过程的效率。如我们的经验实验所示,新模型的效率几乎是FSVM的效率几乎高7倍。 (c)2016年日本电气工程师研究所。由John Wiley&Sons,Inc。出版

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