Event data can hold valuable decision making information, yet
detecting interesting patterns in this type of data is not an easy
task because the data is usually rich and contains spatial, temporal
as well as multivariate dimensions. Research into visual analytics
tools to support the discovery of patterns in event data often
focuses on the spatiotemporal or spatiomultivariate dimension of
the data only. Few research efforts focus on all three dimensions
in one framework. An integral view on all three dimensions is,
however, required to unlock the full potential of event datasets.
In this poster, we present an event visualization, transition, and
interaction framework that enables an integral view on all
dimensions of spatiotemporal multivariate event data. The
framework is built around the notion that the event data space can
be considered a spatiotemporal multivariate hypercube. Results of
a case study we performed suggest that a visual analytics tool
based on the proposed framework is indeed capable to support
users in the discovery of multidimensional spatiotemporal
multivariate patterns in event data.
@InProceedings{OlislagersVAST2012,
author = "Olislagers, F. and Worring, M.",
title = "The Spatiotemporal Multivariate Hypercube for Discovery of Patterns in Event Data",
booktitle = "Visual Analytics Science and Technology",
year = "2012",
url = "https://ivi.fnwi.uva.nl/isis/publications/2012/OlislagersVAST2012",
pdf = "https://ivi.fnwi.uva.nl/isis/publications/2012/OlislagersVAST2012/OlislagersVAST2012.pdf",
has_image = 1
}