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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Three-fold structured classifier design based on matrix pattern
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Three-fold structured classifier design based on matrix pattern

机译:基于矩阵模式的三重结构化分类器设计

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摘要

The traditional vectorized classifier is supposed to incorporate the class structural information but ignore the individual structure of single pattern. In contrast, the matrixized classifier is supposed to consider both the class and the individual structures, and thus gets a superior performance to the vectorized classifier. In this paper, we explore one middle granularity named the cluster between the class and individual, and introduce the cluster structure that means the structure within each class into the matrixized classifier design. Doing so can simultaneously utilize the class, the cluster, and the individual structures in the way that is from global to point. Therefore, the proposed classifier design here owns the three-fold structural information, and can bring the classification performance to an improving trend. In practice, we adopt the Modification of Ho-Kashyap algorithm with Squared approximation of the misclassification errors (MHKS) as the learning paradigm and develop a Three-fold Structured MHKS named TSMHKS. The advantage of the three-fold structural learning framework is considering different close degrees between samples so as to improve the performance. The experimental results demonstrate the feasibility and effectiveness of the TSMHKS. Furthermore, we discuss the theoretical and experimental generalization bound of the proposed algorithm.
机译:传统的矢量化分类器应该包含类结构信息,但会忽略单个模式的单个结构。相比之下,矩阵分类器应该同时考虑类和各个结构,因此比矢量分类器具有更好的性能。在本文中,我们探索了一种中间粒度,称为类与个体之间的簇,并将簇的结构(即每个类内的结构)引入矩阵化的分类器设计中。这样做可以从全局到点同时使用类,群集和单个结构。因此,本文提出的分类器设计具有三层结构信息,可以使分类性能提高。在实践中,我们采用错误分类误差(MHKS)平方近似的Ho-Kashyap算法的修改作为学习范例,并开发了一种三重结构的MHKS,称为TSMHKS。三重结构学习框架的优势在于考虑了样本之间的不同接近度,从而提高了性能。实验结果证明了TSMHKS的可行性和有效性。此外,我们讨论了该算法的理论和实验推广范围。

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