Abstract:
Large-scale multiple testing problems in various scientific disciplines often study correlated
variables simultaneously. However, the existing literature lacks a study of the performances of
FWER controlling procedures under dependence. This thesis concentrates mainly on FWER
and generalized FWER controlling procedures under a correlated Gaussian sequence model
framework.
We establish upper bounds on Bonferroni FWER in the equicorrelated and non-negatively
correlated non-asymptotic setup. We also derive similar upper bounds for the generalized
FWER of the Lehmann-Romano procedure and propose an improved k-FWER controlling
procedure. Towards this, we establish an inequality related to the probability that at least k out
of n events occur, which extends and sharpens the classical ones.
We have found that, under the non-negatively correlated setup, many classical procedures
make zero rejections asymptotically as the number of hypotheses diverges. Specifically, we
have shown that, under this setup, the Bonferroni and the Holm methods have zero FWER and
power asymptotically. We have also established similar asymptotic zero results for the
Hochberg and Hommel procedures under the equicorrelated setup.
Finally, we consider the classical means-testing problem in an equicorrelated Gaussian and
sequential framework. We focus on sequential test procedures that control the type I and type
II familywise error probabilities at pre-specified levels. We establish that our proposed rules
have the optimal expected sample sizes under every possible signal configuration
asymptotically, as the two error probabilities vanish at arbitrary rates.
The results in this thesis illuminate that dependence might be a blessing or a curse, subject to
the type of dependence or the underlying paradigm. Several popular and widely used
procedures fail to hold the FWER at a positive level asymptotically under positively correlated
Gaussian frameworks. On the contrary, the expected sample size of the asymptotically optimal
sequential multiple testing rule is a decreasing function in the common correlation under the
equicorrelated framework. Thus, correlation plays a dual role in the classical fixed-sample size
and the sequential paradigms.