H. Kesten et Ra. Maller, RANDOM DELETION DOES NOT AFFECT ASYMPTOTIC NORMALITY OR QUADRATIC NEGLIGIBILITY, Journal of Multivariate Analysis, 63(1), 1997, pp. 136-179
Suppose a number of points are deleted from a sample of random vectors
in R-d. The number of deleted points may depend on the sample size n,
and on any other sample information, provided only that it is bounded
in probability as n --> infinity. In particular, ''extremes'' of the
sample, however defined, may be deleted. We show that this operation h
as no effect on the asymptotic normality of the sample sum, in the sen
se that the sum of the deleted sample is asymptotically normal, after
norming and centering, if and only if the sample sum itself is asympto
tically normal with the same norming and centering as the deleted sum.
That is, the sample must be drawn from a distribution in the domain o
f attraction of the multivariate normal distribution. The domain of at
traction concept we employ uses general operator norming and centering
, as developed by Hahn and Klass. We also show that random deletion ha
s no effect on the ''quadratic negligibility'' of the sample. These ar
e conditions that are important in the robust analysis of multivariate
data and in regression problems, for example. (C) Academic Press.