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On combining multiple classifiers by fuzzy templates

机译:用模糊模板组合多个分类器

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The authors study classifier fusion using the fuzzy template (FT) technique. Given an object to be classified, each classifier from the pool yields a vector with degrees of "support" for the classes, thereby forming a decision profile. A fuzzy template is associated with each class as the averaged decision profile over the training samples from this class. A new object is then labeled with the class whose fuzzy template is closest to the objects' decision profile. They give a brief overview of the field to place the FT approach in a proper group of classifier combination techniques. Experiments with two data sets (satimage and phoneme) from the ELENA database demonstrate the superior performance of FT over a version of majority voting, aggregation by fuzzy connectives (minimum, maximum, and product), and (unweighted) average.
机译:作者研究了使用模糊模板(FT)技术进行的分类器融合。给定一个要分类的对象,池中的每个分类器都会产生一个向量,这些向量的分类程度为“支持”,从而形成决策概况。模糊模板与每个类别相关联,作为来自该类别的训练样本的平均决策轮廓。然后,用模糊模板最接近对象决策配置文件的类标记一个新对象。他们简要概述了将FT方法应用于适当的分类器组合技术组的领域。来自ELENA数据库的两个数据集(卫星图像和音素)的实验证明了FT具有优于多数投票,通过模糊连接词(最小值,最大值和乘积)和(未加权)平均值进行聚合的性能。

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