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SOREX: Subspace Outlier Ranking Exploration Toolkit

机译:sorex:子空间异常值排名探索工具包

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摘要

Outlier mining is an important data analysis task to distinguish exceptional outliers from regular objects. In recent research novel outlier ranking methods propose to focus on outliers hidden in subspace projections of the data. However, focusing only on the detection of outliers these approaches miss to provide reasons why an object should be considered as an outlier. In this work, we propose a novel toolkit for exploration of subspace outlier rankings. To enable exploration of subspace outliers and to complete knowledge extraction we provide further descriptive information in addition to the pure detection of outliers. As wittinesses for the outlier-ness of an object, we provide information about the relevant projections describing the reasons for outlier properties. We provided SOREX as open source framework on our website1 it is easily extensible and suitable for research and educational purposes in this emerging research area.
机译:异常值挖掘是一个重要的数据分析任务,可以从常规对象区分异常异常值。在最近的研究中,新的异常值排名方法建议专注于隐藏在数据的子空间投影中的异常值。但是,只关注异常值的检测这些方法未命中,提供了对象应该被视为异常值的原因。在这项工作中,我们提出了一种新颖的工具包,用于探索子空间异常排名。为了使子空间异常值探索并完成知识提取,除了纯粹的异常值检测之外,我们还提供了进一步的描述性信息。作为对象的异常的威特性,我们提供有关描述异常属性原因的相关预测的信息。我们将Sorex作为我们的网站上的开源框架1,它很容易可扩展,适用于该新兴研究区域的研究和教育目的。

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