首页> 外文期刊>International Journal of Computational Intelligence and Applications >GROUP OUTLIER FACTOR: A NEW SCORE USING SELF-ORGANISING MAP FOR GROUP-OUTLIER AND NOVELTY DETECTION
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GROUP OUTLIER FACTOR: A NEW SCORE USING SELF-ORGANISING MAP FOR GROUP-OUTLIER AND NOVELTY DETECTION

机译:小组外人因素:使用自组织映射进行小组外人和新颖检测的新评分

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摘要

This paper describe a new concept of "cluster outlier-ness". In order to quantify it, we propose a relative isolation score named group outlier factor (GOF). GOF is a score, which is computed during a clustering process using self-organizing maps. The main difference between GOF and existing methods is that, being an outlier is not associated to a single pattern but to a cluster. Thus, an outlier factor (OF) with respect to each cluster is computed for each new sample and compared to the GOF score associated for each cluster. OF is used as a novelty detection classifier. This approach allows to identify meaningful outlier-clusters and detects novel patterns that previous approaches could not find. Experimental results and comparison studies show that the use of GOF sensibly improves the results in term of cluster-outlier and novelty detection.
机译:本文介绍了“集群离群值”的新概念。为了对其进行量化,我们提出了一个相对孤立度评分,称为组离群值因子(GOF)。 GOF是一个分数,它是在聚类过程中使用自组织图计算的。 GOF与现有方法之间的主要区别在于,异常值与单个模式无关,而与群集相关。因此,针对每个新样本计算关于每个群集的离群因子(OF),并将其与每个群集相关联的GOF得分进行比较。 OF用作新颖性检测分类器。这种方法可以识别有意义的离群值,并检测以前的方法找不到的新颖模式。实验结果和比较研究表明,GOF的使用可明显改善聚类离群值和新颖性检测的结果。

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