Title :
Level set trees with enhanced marginal density visualization
Author :
Kyösti Karttunen;Lasse Holmström;Jussi Klemelä
Author_Institution :
CEMIS-Oulu, Kajaani University Consortium, University of Oulu, Finland
Abstract :
We study level set tree methods to analyze and visualize multivariate data. The probability density function of the underlying distribution is estimated using a kernel density estimator, and the density estimate is visualized using level set trees. These trees can be used to analyze the mode structure of a function. We show how level set trees can be used to enhance more traditional density function visualization tools, like marginal densities and slices of the density. The method is applied to flow cytometry data.
Keywords :
"Level set","Kernel","Data visualization","Density functional theory","Histograms","Atmospheric measurements","Particle measurements"
Conference_Titel :
Information Visualization Theory and Applications (IVAPP), 2014 International Conference on