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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Position regularized Support Vector Domain Description
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Position regularized Support Vector Domain Description

机译:位置正则化支持向量域描述

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摘要

Support Vector Domain Description (SVDD) is an effective method for describing a set of objects. As a basic tool, several application-oriented extensions have been developed, such as support vector clustering (SVC), SVDD-based k-Means (SVDDk-Means) and support vector based algorithm for clustering data streams (SVStream). Despite its significant success, one inherent drawback is that the description is very sensitive to the selection of the trade-off parameter, which is hard to estimate in practice and affects the extensive approaches significantly. To tackle this problem, we propose a novel Position regularized Support Vector Domain Description (PSVDD). In the proposed PSVDD, the complexity of the sphere surface is adaptively regularized by assigning a position-based weighting to each data point, which is computed according to the distance between the corresponding feature space image and the mean of feature space images. To demonstrate the effectiveness of the proposed PSVDD, we apply the position-based weighting to improve two important clustering extensions, i.e., SVC and SVDDk-Means, which respectively result in two new clustering approaches termed PSVC and PSVDDk-Means. Experimental results on several real-world data sets validate the significant improvement achieved by PSVC and PSVDDk-Means.
机译:支持向量域描述(SVDD)是描述一组对象的有效方法。作为一种基本工具,已经开发了几种面向应用程序的扩展,例如支持向量聚类(SVC),基于SVDD的k均值(SVDDk-Means)和用于聚类数据流的基于支持矢量的算法(SVStream)。尽管取得了巨大的成功,但一个固有的缺点是该描述对折衷参数的选择非常敏感,这在实践中很难估计,并且会严重影响广泛的方法。为了解决这个问题,我们提出了一种新颖的位置正则化支持向量域描述(PSVDD)。在提出的PSVDD中,通过为每个数据点分配基于位置的权重来自适应地调整球体表面的复杂度,该权重是根据相应特征空间图像与特征空间图像均值之间的距离计算的。为了证明所提出的PSVDD的有效性,我们应用基于位置的加权来改善两个重要的聚类扩展,即SVC和SVDDk-Means,这分别导致了两种称为PSVC和PSVDDk-Means的新聚类方法。在多个实际数据集上的实验结果验证了PSVC和PSVDDk-Means所取得的显着改进。

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