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Distance metric learning-based kernel gram matrix learning for pattern analysis tasks in kernel feature space

机译:基于距离度量学习的内核语法矩阵学习,用于内核特征空间中的模式分析任务

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摘要

Approaches to distance metric learning (DML) for Mahalanobis distance metric involve estimating a parametric matrix that is associated with a linear transformation. For complex pattern analysis tasks, it is necessary to consider the approaches to DML that involve estimating a parametric matrix that is associated with a nonlinear transformation. One such approach involves performing the DML of Mahalanobis distance in the feature space of a Mercer kernel. In this approach, the problem of estimation of a parametric matrix of Mahalanobis distance is formulated as a problem of learning an optimal kernel gram matrix from the kernel gram matrix of a base kernel by minimizing the logdet divergence between the kernel gram matrices. We propose to use the optimal kernel gram matrices learnt from the kernel gram matrix of the base kernels in pattern analysis tasks such as clustering, multi-class pattern classification and nonlinear principal component analysis. We consider the commonly used kernels such as linear kernel, polynomial kernel, radial basis function kernel and exponential kernel as well as hyper-ellipsoidal kernels as the base kernels for optimal kernel learning. We study the performance of the DML-based class-specific kernels for multi-class pattern classification using support vector machines. Results of our experimental studies on benchmark datasets demonstrate the effectiveness of the DML-based kernels for different pattern analysis tasks.
机译:用于马氏距离度量的距离度量学习(DML)的方法涉及估计与线性变换关联的参数矩阵。对于复杂的模式分析任务,有必要考虑DML的方法,其中包括估计与非线性变换相关的参数矩阵。一种这样的方法涉及在Mercer内核的特征空间中执行马氏距离的DML。在这种方法中,马哈拉诺比斯距离的参数矩阵的估计问题被表述为通过最小化内核克矩阵之间的对数散度从基本内核的内核克矩阵学习最佳内核克矩阵的问题。我们建议在模式分析任务(例如聚类,多类模式分类和非线性主成分分析)中使用从基本内核的内核语法矩阵中学习的最佳内核语法矩阵。我们将常用的核(例如线性核,多项式核,径向基函数核和指数核以及超椭球核)视为优化核学习的基础核。我们使用支持向量机研究了用于多类模式分类的基于DML的类特定内核的性能。我们对基准数据集的实验研究结果表明,基于DML的内核可用于不同的模式分析任务。

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