Publication | Closed Access
Visual cluster exploration of web clickstream data
89
Citations
23
References
2012
Year
Unknown Venue
Cluster ComputingEngineeringBusiness IntelligenceInteractive Data ExplorationWeb Clickstream DataUser SegmentationText MiningInformation RetrievalData ScienceData MiningUser Behavior PatternsClickstream ClustersUser Behavior ModelingVisual Cluster ExplorationKnowledge DiscoveryVisual Data MiningComputer ScienceLinked Data VisualizationWeb Mining
Web clickstream data are routinely collected to study how users browse the web or use a service. It is clear that the ability to recognize and summarize user behavior patterns from such data is valuable to e-commerce companies. In this paper, we introduce a visual analytics system to explore the various user behavior patterns reflected by distinct clickstream clusters. In a practical analysis scenario, the system first presents an overview of clickstream clusters using a Self-Organizing Map with Markov chain models. Then the analyst can interactively explore the clusters through an intuitive user interface. He can either obtain summarization of a selected group of data or further refine the clustering result. We evaluated our system using two different datasets from eBay. Analysts who were working on the same data have confirmed the system's effectiveness in extracting user behavior patterns from complex datasets and enhancing their ability to reason.
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