Optimal Blocking for Three Treatments and BIBD Robustness - Two Problems in Design Optimality
Abstract (Summary)
Design optimality plays a central role in the area of statistical experimental design. In gen-
eral, problems in design optimality are composed of two vital, but separable, components.
One of these is determining conditions under which a design is optimal (such as criterion
bounds, values of design parameters, or special structure in the information matrix). The
other is construction of designs satisfying those conditions. Most papers deal with either
optimality conditions, or design construction in accordance with desired combinatorial prop-
erties, but not both. This dissertation determines optimal designs for three treatments in the
one-way and multi-way heterogeneity settings, ¯rst proving optimality through a series of
bounding arguments, then applying combinatorial techniques for their construction. Among
the results established are optimality with respect to the well known E and A criteria. A-
and E-optimal block designs and row-column designs with three treatments are found, for
any parameter set. E-optimal hyperrectangles with three treatments are also found, for
any parameter set. Systems of distinct representatives theory is used for the construction
of optimal designs. E±ciencies relative to optimal criterion values are used to determine
robustness of block designs against loss of a small number of blocks. Nonisomorphic bal-
anced incomplete block designs are ranked based on their robustness. A complete list of
most robust BIBDs for $v\leq 10$, $r\leq 15$ is compiled.
Bibliographical Information:
Advisor:Geoff Vining; Dan Spitzner; Klaus H. Hinkelmann; Eric P. Smith; John P. Morgan
School:Virginia Polytechnic Institute and State University
School Location:USA - Virginia
Source Type:Master's Thesis
Keywords:statistics
ISBN:
Date of Publication:12/03/2004