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首页> 外文期刊>International journal of machine learning and cybernetics >Multiple rank multi-linear kernel support vector machine for matrix data classification
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Multiple rank multi-linear kernel support vector machine for matrix data classification

机译:用于矩阵数据分类的多秩多线性核支持向量机

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摘要

High-order tensors especially matrices are one of the common forms of data in real world. How to classify tensor data is an important research topic. We know that all high-order tensor data can be transformed into matrix data through tucker tensor decomposition and most of them are linear inseparable and the matrices involved are multiple rank. However, up to now most known classifiers for matrix data are linear and a few nonlinear classifiers are only for rank-one matrices. In order to classify linear inseparable multiple rank matrix data, in this paper, a novel nonlinear classifier named as multiple rank multi-linear kernel SVM (MRMLKSVM) is proposed, which is also an extension of MRMLSVM and an improvement of NLS-TSTM. For verifying the effectiveness of the proposed method, a series of comparative experiments are performed on four data sets taken from different databases. Experiment results indicate that MRMLKSVM is an effective and efficient nonlinear classifier.
机译:高阶张量,尤其是矩阵,是现实世界中常见的数据形式之一。如何对张量数据进行分类是一个重要的研究课题。我们知道,所有的高阶张量数据都可以通过塔克张量分解分解为矩阵数据,并且它们大多数是线性不可分的,并且涉及的矩阵是多秩的。但是,到目前为止,矩阵数据的大多数已知分类器都是线性的,少数非线性分类器仅用于秩一矩阵。为了对线性不可分的多秩矩阵数据进行分类,提出了一种新颖的非线性分类器,称为多秩多线性核支持向量机(MRMLKSVM),它是对MRLMSVM的扩展和对NLS-TSTM的改进。为了验证该方法的有效性,对来自不同数据库的四个数据集进行了一系列比较实验。实验结果表明,MRMLKSVM是一种有效的非线性分类器。

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