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MASA: An efficient framework for anomaly detection in multi-attributed networks

机译:MASA:多归属网络中的异常检测有效框架

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摘要

Anomalous connected subgraph detection has been widely used in multiple scenarios, such as botnet detection, fraud detection and event detection. Nevertheless, the huge search space makes a serious computational challenge. Moreover, the anomalous connected subgraph detection becomes much harder when the networks involve a large number of attributes and become the multi-attributed networks. With the multi-attributed characteristic, most existing approaches are unable to solve this problem effectively and efficiently since it involves the anomalous connected subgraph detection and attributes selection simultaneously. In view of this, this paper proposes a general framework, namely multi-attributed anomalous subgraphs and attributes scanning (MASA), to solve this problem in multi-attributed networks. We formulate and optimize a great number of complicated non-parametric scan statistic functions that are employed to measure the joint anomalousness of the connected subgraphs and the corresponding subset of attributes in multi-attributed networks. More specifically, we first propose to transform each formulated nonparametric scan statistic function into a set of sub-functions with the theoretical analysis. Then using techniques of the tree approximation priors and the dynamic algorithms, an efficient approximation algorithm is presented to solve each transformed sub-function. Finally, with three real-world datasets from different domains, we conduct extensive experimental evaluations to demonstrate the effectiveness and efficiency of the proposed approach.
机译:异常连接的子图检测已广泛用于多种情况,例如僵尸网络检测,欺诈检测和事件检测。尽管如此,庞大的搜索空间会产生严重的计算挑战。此外,当网络涉及大量属性并成为多归属网络时,异常连接的子图检测变得更加困难。利用多归因于多种特性,大多数现有方法无法有效且有效地解决此问题,因为它涉及同时选择异常连接的子图检测和属性。鉴于此,本文提出了一般框架,即多归因的异常子图和属性扫描(MASA),以解决多归属网络中的这个问题。我们制定并优化大量复杂的非参数扫描统计功能,用于测量连接子图的关节异常和多归属网络中的相应属性子集。更具体地,我们首先建议将每个配方的非参数扫描统计功能转换为具有理论分析的一组子函数。然后,使用树近似前沿的技术和动态算法,提出了一种有效的近似算法来解决每个变换的子功能。最后,使用来自不同域的三个真实数据集,我们进行了广泛的实验评估,以证明所提出的方法的有效性和效率。

著录项

  • 来源
    《Computers & Security》 |2021年第3期|102085.1-102085.13|共13页
  • 作者单位

    Bejing Advanced Innovation Center for Big Data and Brain Computing Beihang University Beijing China School of Computer Science and Engineering Beihang University Beijing China;

    Bejing Advanced Innovation Center for Big Data and Brain Computing Beihang University Beijing China School of Computer Science and Engineering Beihang University Beijing China;

    Bejing Advanced Innovation Center for Big Data and Brain Computing Beihang University Beijing China School of Computer Science and Engineering Beihang University Beijing China;

    Bejing Advanced Innovation Center for Big Data and Brain Computing Beihang University Beijing China School of Computer Science and Engineering Beihang University Beijing China;

    CNCERT Beijing China;

  • 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

    Multi-attributed networks; Anomalous attributes selection; Anomalous connected subgraph; detection; Nonparametric scan statistic; Approximation algorithm;

    机译:多归属网络;异常属性选择;异常连接的子图;检测;非参数扫描统计;近似算法;
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