Given an i.i.d. sequence X1,X2, … with common distribution function (d.f.) F, the usual non-parametric estimator of F is the e.d.f. Fn;
where Uo is the d.f. of the unit mass at zero. An admissible perturbation of the e.d.f., say
, is obtained if Uo is replaced by a d.f.
, where
is a sequence of d.f.'s converging weakly to Uo. Such perturbed e.d.f.′s arise quite naturally as integrals of non-parametric density estimators, e.g. as
. It is shown that if F satisfies some smoothness conditions and the perturbation is not too drastic then
‘has the Chung–Smirnov property'; i.e., with probability one,
1. But if the perturbation is too vigorous then this property is lost: e.g., if F is the uniform distribution and Hn is the d.f. of the unit mass at n–α then the above lim sup is ≦ 1 or = ∞, depending on whether
or ![](//static-cambridge-org.ezproxyberklee.flo.org/binary/version/id/urn:cambridge.org:id:binary:20180209073924824-0413:S0021900200046295:S0021900200046295_inline9.gif?pub-status=live)