Data depth and correlation
Tóm tắt
We describe depth–based graphical displays that show the interdependence
of multivariate distributions. The plots involve one–dimensional curves or bivariate scatterplots, so they are easier to interpret than correlation matrices. The correlation curve,
modelled on the scale curve of Liu et al. (1999), compares the volume of the observed
central regions with the volume under independence. The correlation DD–plot is the
scatterplot of depth values under a reference distribution against depth values under independence. The area of the plot gives a measure of distance from independence. Correlation curve and DD-plot require an ‘independence’ model as a baseline: Besides classical
parametric specifications, a nonparametric estimator, derived from the randomization
principle, is used. Combining data depth and the notion of quadrant dependence, quadrant correlation
trajectories are obtained which allow simultaneous representation of
subsets of variables. The properties of the plots for the multivariate normal distribution
are investigated. Some real data examples are illustrated.