A data depth can be used to measure the “depth” or
“outlyingness” of a given multivariate sample with respect to its
underlying distribution. This leads to a natural center-outward ordering of the
sample points. Based on this ordering, quantitative and graphical methods are
introduced for analyzing multivariate distributional characteristics such as
location, scale, bias, skewness and kurtosis, as well as for comparing
inference methods. All graphs are one-dimensional curves in the plane and can
be easily visualized and interpreted. A “sunburst plot” is
presented as a bivariate generalization of the box-plot. DD-(depth
versus depth) plots are proposed and examined as graphical inference tools.
Some new diagnostic tools for checking multivariate normality are introduced.
One of them monitors the exact rate of growth of the maximum deviation from the
mean, while the others examine the ratio of the overall dispersion to the
dispersion of a certain central region. The affine invariance property of a
data depth also leads to appropriate invariance properties for the proposed
statistics and methods.
@article{1018031260,
author = {Liu, Regina Y. and Parelius, Jesse M. and Singh, Kesar},
title = {Multivariate analysis by data depth: descriptive statistics,
graphics and inference, (with discussion and a rejoinder by Liu and
Singh)},
journal = {Ann. Statist.},
volume = {27},
number = {4},
year = {1999},
pages = { 783-858},
language = {en},
url = {http://dml.mathdoc.fr/item/1018031260}
}
Liu, Regina Y.; Parelius, Jesse M.; Singh, Kesar. Multivariate analysis by data depth: descriptive statistics,
graphics and inference, (with discussion and a rejoinder by Liu and
Singh). Ann. Statist., Tome 27 (1999) no. 4, pp. 783-858. http://gdmltest.u-ga.fr/item/1018031260/