Abstract:
A large class of goodness-of-fit test statistics based on sup-functionals of
weighted empirical
processes is proposed and studied. The weight functions employed are the Erdős–Feller–Kolmogorov–Petrovski
upper-class functions of a Brownian bridge.
Based on the result of M. Csörgő, S. Csörgő, L. Horváth, and
D. Mason on this type of test statistics,
we provide the asymptotic
null distribution theory for the class of tests and present an algorithm for
tabulating the limit distribution functions under the null hypothesis.
A new family of nonparametric confidence bands is constructed for the true
distribution function and is found to perform very well.
The results obtained, involving a new result on the convergence in distribution
of the higher criticism statistic,
as introduced by D. Donoho and J. Jin, demonstrate the advantage of our approach
over a common approach that utilizes
a family of regularly varying weight functions.
Furthermore, we show that, in various subtle problems of detecting sparse
heterogeneous mixtures, the proposed test statistics achieve the detection
boundary found by Yu. I. Ingster and, when distinguishing between the null and
alternative hypotheses, perform optimally adaptively to unknown sparsity and
size of the non-null effects.