Many domains have begun collecting and processing enormous amounts of complex data in order to improve their very different processes. In many cases, event data is collected and put together as sequences. For most complex cases, multivariate events may have up to hundreds of attributes, and sequences can contain thousands of events, making the visualization of such data a real challenge. Previous research contributions have shown that such visualizations are possible, but it still remains tedious, even for experts, to go through those datasets, especially when not knowing what to look for. Based on a new classification and adaptation of existing visualization approaches and guidance strategies, we propose in this thesis a solution for how to improve the analysis of multivariate event sequences with guidance and visualization recommendations. In particular, this will be done by presenting VizREvent, a newly created application focusing on the domain of sports event analysis. Lastly, through an evaluation with both Visual Analysis experts and users, we show that our approach assists experts' and users' reasoning and question-answering capabilities and also opens up opportunities for further research.
guidance
Advisor
Abstract
Year of Publication
2025
Secondary Title
Institute of Visual Computing and Human-Centered Technology
Paper
Number of Pages
74
reposiTUm Handle
20.500.12708/217564
Publisher
TU Wien
Place Published
Vienna
DOI
10.34726/hss.2025.131404
T. Borde, “Visualisierungsempfehlung bei der Visuelle Analyse der Abfolge von Sportereignissen”, Institute of Visual Computing and Human-Centered Technology. TU Wien, Vienna, p. 74, 2025.
Master Thesis
AC17597498
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