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A distributed algorithm for the cluster-based outlier detection using unsupervised extreme learning machines - MaRDI portal

A distributed algorithm for the cluster-based outlier detection using unsupervised extreme learning machines (Q1992535)

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scientific article; zbMATH DE number 6971891
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A distributed algorithm for the cluster-based outlier detection using unsupervised extreme learning machines
scientific article; zbMATH DE number 6971891

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    A distributed algorithm for the cluster-based outlier detection using unsupervised extreme learning machines (English)
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    5 November 2018
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    Summary: Outlier detection is an important data mining task, whose target is to find the abnormal or atypical objects from a given dataset. The techniques for detecting outliers have a lot of applications, such as credit card fraud detection and environment monitoring. Our previous work proposed the Cluster-Based (CB) outlier and gave a centralized method using unsupervised extreme learning machines to compute CB outliers. In this paper, we propose a new distributed algorithm for the CB outlier detection (DACB). On the master node, we collect a small number of points from the slave nodes to obtain a threshold. On each slave node, we design a new filtering method that can use the threshold to efficiently speed up the computation. Furthermore, we also propose a ranking method to optimize the order of cluster scanning. At last, the effectiveness and efficiency of the proposed approaches are verified through a plenty of simulation experiments.
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