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Stacked Blockwise Combination of Interpretable TSK Fuzzy Classifiers by Negative Correlation Learning

机译:负相关学习的可解释性TSK模糊分类器的分层堆叠组合

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In this paper, we propose a blockwise combination of interpretable Takagi–Sugeno–Kang (TSK) fuzzy classifiers to simultaneously achieve high accuracy and concise interpretability. As a special hierarchical fuzzy classifier, the proposed classifier is built in a stacked block-by-block way. Each base building block consists of multiple zero-order TSK fuzzy classifiers, which are simultaneously trained in an analytical manner by using negative correlation learning to enhance the generalization ability of the base building block. For utilizing the stacked generalization principle, a random projection of the outputs from the current base building block is presented to the next base building block together with the current training sample in order to enhance the generalization ability of our hierarchical fuzzy classifier. The purpose of such a special hierarchical structure is that all base building blocks can be trained in the same input–output space with the current training sample and the randomly projected output from the previous building block. In the input layer, the target output for the current training sample is used instead of the randomly projected output from the previous building block. Each TSK fuzzy classifier in base building blocks consists of interpretable TSK fuzzy rules, which are generated by randomly selecting input features and randomly assigning an antecedent fuzzy subset from a fixed fuzzy partition to each of the selected input features. Merits of the proposed classifier are demonstrated through comparative studies on benchmark datasets.
机译:在本文中,我们提出了可解释的Takagi-Sugeno-Kang(TSK)模糊分类器的逐块组合,以同时实现高精度和简洁的可解释性。作为一种特殊的分层模糊分类器,提出的分类器以逐块堆叠的方式构建。每个基础构建块均包含多个零阶TSK模糊分类器,这些分类器通过使用负相关学习以解析方式同时进行训练,以增强基础构建块的泛化能力。为了利用堆叠泛化原理,将当前基础构建模块的输出的随机投影与当前训练样本一起呈现给下一个基础构建模块,以增强我们的分层模糊分类器的泛化能力。这种特殊的分层结构的目的是,可以使用当前的训练样本和前一个构建块的随机投影输出,在相同的输入-输出空间中对所有基本构建块进行训练。在输入层中,将使用当前训练样本的目标输出,而不是前一个构建块的随机投影输出。基础构建块中的每个TSK模糊分类器均包含可解释的TSK模糊规则,这些规则是通过随机选择输入特征并将固定模糊分区中的先前模糊子集随机分配给每个所选输入特征而生成的。通过对基准数据集的比较研究证明了所提出分类器的优点。

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