首页> 外文会议>Data Mining Workshops, 2009. ICDMW '09 >Multi-sphere Support Vector Data Description for Outliers Detection on Multi-distribution Data
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Multi-sphere Support Vector Data Description for Outliers Detection on Multi-distribution Data

机译:多分布数据离群值检测的多球支持向量数据描述

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SVDD has been proved a powerful tool for outlier detection. However, in detecting outliers on multi-distribution data, namely there are distinctive distributions in the data, it is very challenging for SVDD to generate a hyper-sphere for distinguishing outliers from normal data. Even if such a hyper-sphere can be identified, its performance is usually not good enough. This paper proposes an multi-sphere SVDD approach, named MS-SVDD, for outlier detection on multi-distribution data. First, an adaptive sphere detection method is proposed to detect data distributions in the dataset. The data is partitioned in terms of the identified data distributions, and the corresponding SVDD classifiers are constructed separately. Substantial experiments on both artificial and real-world datasets have demonstrated that the proposed approach outperforms original SVDD.
机译:SVDD已被证明是异常检测的强大工具。但是,在检测多分布数据的异常值时,即数据中存在明显的分布时,SVDD产生一个用于区分异常值和正常数据的超球面是非常具有挑战性的。即使可以识别出这种超球面,其性能通常也不够好。本文提出了一种多球SVDD方法,称为MS-SVDD,用于对多分布数据进行异常检测。首先,提出了一种自适应球面检测方法来检测数据集中的数据分布。根据识别的数据分布对数据进行分区,并分别构造相应的SVDD分类器。在人工和真实数据集上的大量实验表明,该方法优于原始SVDD。

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