학술논문

Visual Analysis of Collective Anomalies Through High-Order Correlation Graph
Document Type
Conference
Source
2018 IEEE Pacific Visualization Symposium (PacificVis) PACIFICVIS Pacific Visualization Symposium (PacificVis), 2018 IEEE. :150-159 Apr, 2018
Subject
Computing and Processing
Anomaly detection
Correlation
Data visualization
Monitoring
Visual analytics
Software
correlation graph visualization
collective anomaly
Language
ISSN
2165-8773
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.