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Ko, Sungahn
Intelligent Visual Analysis and Data Exploration Research
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Analyzing High-dimensional Multivariate Network Links with Integrated Anomaly Detection, Highlighting and Exploration

Author(s)
Ko,SungahnAfzal, ShehzadWalton, SimonYang, YangChae, JunghoonMalik, AbishJang, YunChen, MinEbert, David
Issued Date
2014-11-12
DOI
10.1109/VAST.2014.7042484
URI
https://scholarworks.unist.ac.kr/handle/201301/32614
Fulltext
https://ieeexplore.ieee.org/document/7042484
Citation
IEEE Visualization Conference, pp.83 - 92
Abstract
This paper focuses on the integration of a family of visual analytics techniques for analyzing high-dimensional, multivariate network data that features spatial and temporal information, network connections, and a variety of other categorical and numerical data types. Such data types are commonly encountered in transportation, shipping, and logistics industries. Due to the scale and complexity of the data, it is essential to integrate techniques for data analysis, visualization, and exploration. We present new visual representations, Petal and Thread, to effectively present many-to-many network data including multi-attribute vectors. In addition, we deploy an information-theoretic model for anomaly detection across varying dimensions, displaying highlighted anomalies in a visually consistent manner, as well as supporting a managed process of exploration. Lastly, we evaluate the proposed methodology through data exploration and an empirical study.
Publisher
IEEE VIS

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