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The responsibility weighted Mahalanobis kernel for semi-supervised training of support vector machines for classification

机译:责任加权Mahalanobis核用于支持向量机分类的半监督训练

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Kernel functions in support vector machines (SVM) are needed to assess the similarity of input samples in order to classify these samples, for instance. Besides standard kernels such as Gaussian (i.e., radial basis function, RBF) or polynomial kernels, there are also specific kernels tailored to consider structure in the data for similarity assessment. In this paper, we will capture structure in data by means of probabilistic mixture density models, for example Gaussian mixtures in the case of real-valued input spaces. From the distance measures that are inherently contained in these models, e.g., Mahalanobis distances in the case of Gaussian mixtures, we derive a new kernel, the responsibility weighted Mahalanobis (RWM) kernel. Basically, this kernel emphasizes the influence of model components from which any two samples that are compared are assumed to originate (that is, the "responsible" model components). We will see that this kernel outperforms the RBF kernel and other kernels capturing structure in data (such as the LAP kernel in Laplacian SVM) in many applications where partially labeled data are available, i.e., for semi-supervised training of SVM. Other key advantages are that the RWM kernel can easily be used with standard SVM implementations and training algorithms such as sequential minimal optimization, and heuristics known for the parametrization of RBF kernels in a C-SVM can easily be transferred to this new kernel. Properties of the RWM kernel are demonstrated with 20 benchmark data sets and an increasing percentage of labeled samples in the training data. (C) 2015 Elsevier Inc. All rights reserved.
机译:例如,需要使用支持向量机(SVM)中的内核功能来评估输入样本的相似性,以便对这些样本进行分类。除了诸如高斯(即径向基函数,RBF)之类的标准内核或多项式内核之外,还针对特定的内核量身定制以考虑数据中的结构以进行相似性评估。在本文中,我们将通过概率混合密度模型(例如在实值输入空间的情况下为高斯混合)捕获数据中的结构。根据这些模型中固有的距离度量,例如高斯混合情况下的马氏距离,我们得出了一个新的核,即责任加权马氏(RWM)核。基本上,此内核强调模型组件的影响,假定要比较的两个样本都来自该模型组件(即“负责任的”模型组件)。我们将看到,在许多具有部分标记数据的应用程序(即用于SVM的半监督训练)的应用中,该内核的性能优于RBF内核和其他捕获数据结构的内核(例如Laplacian SVM中的LAP内核)。其他关键优势是RWM内核可以轻松地与标准SVM实现和训练算法(例如顺序最小优化)一起使用,并且以C-SVM中的RBF内核参数化而闻名的启发式算法可以轻松地转移到该新内核中。 RWM内核的属性通过20个基准数据集和训练数据中标记的样本所占百分比的增加来证明。 (C)2015 Elsevier Inc.保留所有权利。

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