High Dimensional Clustering Using Parallel Coordinates and the Grand Tour
暂无分享,去创建一个
In this paper, we present some graphical techniques for cluster analysis of high-dimensional data. Parallel coordinate plots and parallel coordinate density plots are graphical techniques which map multivariate data into a two-dimensional display. The method has some elegant duality properties with ordinary Cartesian plots so that higher-dimensional mathematical structures can be analyzed. Our high interaction software allows for rapid editing of data to remove outliers and isolate clusters by brushing. Our brushing techniques allow not only for hue adjustment, but also for saturation adjustment. Saturation adjustment allows for the handling of comparatively massive data sets by using the α-channel of the Silicon Graphics workstation to compensate for heavy overplotting.
[1] Daniel Asimov,et al. The grand tour: a tool for viewing multidimensional data , 1985 .
[2] Edward J. Wegman,et al. The Grand Tour in k-Dimensions , 1992 .
[3] E. Wegman. Hyperdimensional Data Analysis Using Parallel Coordinates , 1990 .
[4] E. Wegman,et al. Construction of line densities for parallel coordinate plots , 1992 .
[5] Andreas Buja,et al. Grand tour methods: an outline , 1986 .