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Kernel learning and optimization with Hilbert-Schmidt independence criterion

机译:基于希尔伯特-施密特独立性准则的内核学习和优化

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摘要

Measures of statistical dependence between random variables have been successfully applied in many machine learning tasks, such as independent component analysis, feature selection, clustering and dimensionality reduction. The success is based on the fact that many existing learning tasks can be cast into problems of dependence maximization (or minimization). Motivated by this, we present a unifying view of kernel learning via statistical dependence estimation. The key idea is that good kernels should maximize the statistical dependence between the kernels and the class labels. The dependence is measured by the Hilbert-Schmidt independence criterion (HSIC), which is based on computing the Hilbert-Schmidt norm of the cross-covariance operator of mapped samples in the corresponding Hilbert spaces and is traditionally used to measure the statistical dependence between random variables. As a special case of kernel learning, we propose a Gaussian kernel optimization method for classification by maximizing the HSIC, where two forms of Gaussian kernels (spherical kernel and ellipsoidal kernel) are considered. Extensive experiments on real-world data sets from UCI benchmark repository validate the superiority of the proposed approach in terms of both prediction accuracy and computational efficiency.
机译:随机变量之间的统计相关性度量已成功应用于许多机器学习任务中,例如独立分量分析,特征选择,聚类和降维。成功的基础是许多现有的学习任务都可以转化为依赖最大化(或最小化)的问题。因此,我们提出了通过统计依赖估计来统一学习内核的观点。关键思想是,好的内核应最大化内核与类标签之间的统计依赖性。依存关系通过Hilbert-Schmidt独立性标准(HSIC)进行测量,该标准基于计算相应Hilbert空间中映射样本的交叉协方差算子的Hilbert-Schmidt范数,并且传统上用于测量随机之间的统计依存关系变量。作为核学习的一个特例,我们提出了一种通过最大化HSIC进行分类的高斯核优化方法,其中考虑了两种形式的高斯核(球形核和椭圆形核)。从UCI基准存储库对真实数据集进行的大量实验证明了该方法在预测准确性和计算效率方面的优越性。

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