基于聚类的离群数据集智能生成与检测模板

Rasoul Kiani, M. Montazeri, B. Minaei-Bidgoli
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引用次数: 0

摘要

异常值是与其他数据集具有异常行为的数据。异常值有三种不同类型,即点异常、集体异常和条件异常。使用不同的密度、聚类、距离和分布方法来检测异常值。很明显,在测试检测算法之前,需要一个包含不同类型异常值的数据集。本文提出了一种智能聚类算法来生成由不同离群点组成的数据集。本文的另一个重点是数据集中两种未调查类型的集体数据的概率,这些异常被称为I型和II型。结果表明,该算法能够生成包含不同类型异常值的数据集。该数据集可用于所有离群值检测技术。除了检测点异常外,还可以检测所有的集体异常。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Production and Detection Template of Outlier Dataset Using Clustering
Outliers are data with anomalous behaviors to other datasets. There are three different types of outliers, namely point anomaly, collective anomaly, and conditional anomaly. Different density-, clustering-, distance-, and distribution-based methods are used to detect outliers. It is obvious that before testing detection algorithms, a dataset that encompasses different types of outliers is required. In this paper an intelligent clustering algorithm is presented to produce a dataset consisting of different outliers. The other important point in this paper is the probability of two uninvestigated types of collective data among datasets that the anomalies are called type I and II. Results show that the proposed algorithm is capable of producing a dataset including different types of outliers. This dataset can be used in all outlier detection techniques. In addition to detection of point anomalies, it can detect all collective anomalies.
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