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A multi-stage anomaly detection scheme for augmenting the security in IoT-enabled applications

机译:一种多阶段异常检测方案,用于增强启用物联网的应用程序的安全性

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摘要

The synergy between data security and high intensive computing has envisioned the way to robust anomaly detection schemes which in turn necessitates the need for efficient data analysis. Data clustering is one of the most important components of data analytics, and plays an important role in various Internet of Things (IoT)-enabled applications such as-Industrial IoT, Smart Grids, Connected Vehicles, etc. Density-Based Spatial Clustering of Applications with Noise (DBSCAN) is one such clustering technique which is widely used to detect anomalies in large-scale data. However, the traditional DBSCAN algorithm suffers from the nearest neighbor search and parameter selection problems, which may cause the performance of any implemented solution in this environment to deteriorate. To remove these gaps, in this paper, a multi-stage model for anomaly detection has been proposed by rectifying the problems incurred in traditional DBSCAN. In the first stage of the proposed solution, Boruta algorithm is used to capture the relevant set of features from the dataset. In the second stage, firefly algorithm, with a Davies-Bouldin Index based K-medoid approach, is used to perform the partitioning. In the third stage, a kernel-based locality sensitive hashing is used along with the traditional DBSCAN to solve the problem of the nearest neighbor search. Finally, the resulting set of the nearest neighbors are used in k-distance graph to determine the desired set of parameters, i.e., Eps (maximum radius of the neighborhood) and MinPts (minimum number of points in Eps neighborhood) for DBSCAN. Several sets of experiments have been performed on different datasets to demonstrate the effectiveness of the proposed scheme.
机译:数据安全性与高强度计算之间的协同作用已经构想出了一种强大的异常检测方案,这反过来又需要有效的数据分析。数据集群是数据分析的最重要组成部分之一,并且在各种启用了物联网(IoT)的应用程序中发挥重要作用,例如工业IoT,智能电网,互联车辆等。基于密度的应用程序空间集群噪声分析(DBSCAN)是一种这样的聚类技术,被广泛用于检测大规模数据中的异常。但是,传统的DBSCAN算法存在最近邻居搜索和参数选择问题,这可能会导致在此环境中任何已实现解决方案的性能下降。为了消除这些差距,本文通过纠正传统DBSCAN中出现的问题,提出了一种多阶段的异常检测模型。在提出的解决方案的第一阶段,使用Boruta算法从数据集中捕获相关的特征集。在第二阶段,使用萤火虫算法和基于Davies-Bouldin Index的K-medoid方法进行分割。在第三阶段,将基于内核的局部敏感哈希与传统的DBSCAN一起使用,以解决最近邻居搜索的问题。最后,将最接近的邻居的结果集用于k距离图中,以确定DBSCAN的所需参数集,即Eps(邻居的最大半径)和MinPts(Eps邻居的最小点数)。已经在不同的数据集上进行了几组实验,以证明所提出方案的有效性。

著录项

  • 来源
    《Future generation computer systems》 |2020年第3期|105-118|共14页
  • 作者

  • 作者单位

    Electrical Engineering Department. Ecole de technologie superieure Universite du Quebec Montreal QC H3C 1K3 Canada Computer Science & Engineering Department Thapar Institute of Engineering and Technology (Deemed to be University) Patiala India;

    Computer Science & Engineering Department Thapar Institute of Engineering and Technology (Deemed to be University) Patiala India;

    Electrical Engineering Department. Ecole de technologie superieure Universite du Quebec Montreal QC H3C 1K3 Canada;

    SITE University of Ottawa Canada;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Anomaly detection; Internet of Things; Boruta algorithm; K-medoid clustering; Firefly algorithm; Density-based clustering; Locality sensitive hashing;

    机译:异常检测;物联网;Boruta算法;K-medoid聚类;萤火虫算法;基于密度的聚类;局部敏感哈希;

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