Visual Analysis of Collective Anomalies Through High-Order Correlation Graph

Jun Tao, Lei Shi, Zhou Zhuang, Congcong Huang, Rulei Yu, Purui Su, Chaoli Wang, Yang Chen
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引用次数: 10

Abstract

Detecting, analyzing and reasoning collective anomalies is important for many real-life application domains such as facility monitoring, software analysis and security. The main challenges include the overwhelming number of low-risk events and their multifaceted relationships which form the collective anomaly, the diversity in various data and anomaly types, and the difficulty to incorporate domain knowledge in the anomaly analysis process. In this paper, we propose a novel concept of high-order correlation graph (HOCG). Compared with the previous correlation graph definition, HOCG achieves better user interactivity, computational scalability, and domain generality through synthesizing heterogeneous types of nodes, attributes, and multifaceted relationships in a single graph. We design elaborate visual metaphors, interaction models, and the coordinated multiple view based interface to allow users to fully unleash the visual analytics power over HOCG. We conduct case studies in two real-life application domains, i.e., facility monitoring and software analysis. The results demonstrate the effectiveness of HOCG in the overview of point anomalies, detection of collective anomalies, and reasoning process of root cause analysis.
利用高阶相关图可视化分析集体异常
检测、分析和推理集体异常对于设施监控、软件分析和安全等许多现实应用领域都很重要。主要的挑战包括大量的低风险事件及其相互关系构成了集体异常,各种数据和异常类型的多样性,以及难以将领域知识纳入异常分析过程。本文提出了高阶相关图(HOCG)的新概念。与以往的关联图定义相比,HOCG通过在单个图中综合异构类型的节点、属性和多面关系,实现了更好的用户交互性、计算可扩展性和领域通用性。我们设计了精致的视觉隐喻、交互模型和基于多视图的协调界面,让用户充分发挥HOCG的视觉分析能力。我们在两个实际应用领域进行案例研究,即设施监控和软件分析。结果证明了HOCG在点异常概述、集体异常检测和根本原因分析推理过程中的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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