Tail approximations for the Student t-, F-, and Welch statistics for non-normal and not necessarily i.i.d. random variables
Artikel i vetenskaplig tidskrift, 2014

Let T be the Student one- or two-sample t-, F-, or Welch statistic. Now release the underlying assumptions of normality, independence and identical distribution and consider a more general case where one only assumes that the vector of data has a continuous joint density. We determine asymptotic expressions for P(T > u) as u -> infinity for this case. The approximations are particularly accurate for small sample sizes and may be used, for example, in the analysis of High-Throughput Screening experiments, where the number of replicates can be as low as two to five and often extreme significance levels are used. We give numerous examples and complement our results by an investigation of the convergence speed - both theoretically, by deriving exact bounds for absolute and relative errors, and by means of a simulation study.

dependent random variables

high-throughput screening

F-test

non-homogeneous data

MOMENT CONDITIONS

FALSE DISCOVERY RATES

non-normal

SADDLEPOINT APPROXIMATION

Författare

Dmitrii Zholud

Chalmers, Matematiska vetenskaper, matematisk statistik

Göteborgs universitet

Bernoulli

1350-7265 (ISSN)

Vol. 20 2102-2130

Ämneskategorier

Matematik

DOI

10.3150/13-bej552