Broeksema, BertjanTelea, Alexandru C.Baudel, ThomasHolly Rushmeier and Oliver Deussen2015-02-282015-02-2820131467-8659https://doi.org/10.1111/cgf.12194We present a set of interactive techniques for the visual analysis of multi‐dimensional categorical data. Our approach is based on multiple correspondence analysis (MCA), which allows one to analyse relationships, patterns, trends and outliers among dependent categorical variables. We use MCA as a dimensionality reduction technique to project both observations and their attributes in the same 2D space. We use a treeview to show attributes and their domains, a histogram of their representativity in the data set and as a compact overview of attribute‐related facts. A second view shows both attributes and observations. We use a Voronoi diagram whose cells can be interactively merged to discover salient attributes, cluster values and bin categories. Bar chart legends help assigning meaning to the 2D view axes and 2D point clusters. We illustrate our techniques with real‐world application data.We present a set of interactive techniques for the visual analysis of multidimensional categorical data. Our approach is based on Multiple Correspondence Analysis (MCA), which allows one to analyze relationships, patterns, trends and outliers among dependent categorical variables. We use MCA as a dimensionality reduction technique to project both observations and their attributes in the same 2D space. We use a treeview to show attributes and their domains, a histogram of their representativity in the data set, and as a compact overview of attribute‐related facts. A second view shows both attributes and observations.categorical datamultivariate datadimensionality reductionexploratory analysisI.3 [Computer Graphics]Interaction techniquesI.3.8 ApplicationsVisual Analysis of Multi‐Dimensional Categorical Data Sets