Bogdan Prisacari, German Rodriguez, et al.
INA-OCMC 2014
Temporal event sequence data is increasingly commonplace, with applications ranging from electronic medical records to financial transactions to social media activity. Previously developed techniques have focused on low-dimensional datasets (e.g., with less than 20 distinct event types). Real-world datasets are often far more complex. This paper describes DecisionFlow, a visual analysis technique designed to support the analysis of high-dimensional temporal event sequence data (e.g., thousands of event types). DecisionFlow combines a scalable and dynamic temporal event data structure with interactive multi-view visualizations and ad hoc statistical analytics. We provide a detailed review of our methods, and present the results from a 12-person user study. The study results demonstrate that DecisionFlow enables the quick and accurate completion of a range of sequence analysis tasks for datasets containing thousands of event types and millions of individual events.
Bogdan Prisacari, German Rodriguez, et al.
INA-OCMC 2014
Xiao-Yu Hu, Evangelos Eleftheriou, et al.
Israeli SYSTOR 2009
Konstantinos Tarabanis, Roger Y. Tsai, et al.
Computer Vision and Image Understanding
Eli Packer, Asaf Tzadok, et al.
ICDAR 2011