We explore the effects of selecting alternative layouts in hierarchical displays that show multiple aspects of large multivariate datasets, including spatial and temporal characteristics. Hierarchical displays of this type condition a dataset by multiple discrete variable values, creating nested graphical summaries of the resulting subsets in which size, shape and colour can be used to show subset properties. These 'small multiples' are ordered by the conditioning variable values and are laid out hierarchically using dimensional stacking. Crucially, we consider the use of different layouts at different hierarchical levels, so that the coordinates of the plane can be used more effectively to draw attention to trends and anomalies in the data...
A number of researchers have designed visualisation systems that consist of multiple components, thr...
Data cubes as employed by On-Line Analytical Processing (OLAP) play a key role in many application d...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
Visualizing high-dimensional labeled data on a two-dimensional plane can quickly result in visual cl...
Controlled experiments with novice treemap users and real data highlight the strengths of treemaps ...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Figure 1: Three Grid TreeMap variants applied on a hierarchically structured data set of 35 time ser...
We present a novel hierarchical modeling method for layout representation learning, the core of desi...
This thesis applies a hierarchical latent trait model system to a large quantity of data. The motiva...
When visualizing data, spatial and temporal references of these data often have to be considered in ...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Paired hierarchical visualizations (PairTrees) integrate treemaps, node-link diagrams, choropleth m...
Hierarchies are a useful way of representing data. The parent-child relationships they define facili...
Abstract. Visualization is very useful for various large-scale computing fields. One of the authors ...
A number of researchers have designed visualisation systems that consist of multiple components, thr...
Data cubes as employed by On-Line Analytical Processing (OLAP) play a key role in many application d...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
Visualizing high-dimensional labeled data on a two-dimensional plane can quickly result in visual cl...
Controlled experiments with novice treemap users and real data highlight the strengths of treemaps ...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
Figure 1: Three Grid TreeMap variants applied on a hierarchically structured data set of 35 time ser...
We present a novel hierarchical modeling method for layout representation learning, the core of desi...
This thesis applies a hierarchical latent trait model system to a large quantity of data. The motiva...
When visualizing data, spatial and temporal references of these data often have to be considered in ...
Many graphical methods for displaying multivariate data consist of arrangements of multiple displays...
Paired hierarchical visualizations (PairTrees) integrate treemaps, node-link diagrams, choropleth m...
Hierarchies are a useful way of representing data. The parent-child relationships they define facili...
Abstract. Visualization is very useful for various large-scale computing fields. One of the authors ...
A number of researchers have designed visualisation systems that consist of multiple components, thr...
Data cubes as employed by On-Line Analytical Processing (OLAP) play a key role in many application d...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...