This thesis defines a broad class of resolvable incomplete block designs for multifactor experiments, called αₙ-designs. A general methodology for their construction is described and is shown to be a natural extension of the method used by Patterson and Williams (1976) in their construction of α-designs. In fact, the class of α-designs are a special case of αₙ-designs with n = 1. The family of αₙ-designs was primarily developed for their use in factorial experiments. While they are particularly suitable for this purpose, for some combinations of design parameters they also provide more efficient designs than the best available α-designs. Algorithms for the generation of efficient designs require computationally expensive eigenvalue c...
A common problem experimenters face is the choice of fractional factorial designs. Minimum aberratio...
Affine-resolvable designs are constructed from orthogonal arrays and shown to be optimal among resol...
This overview provides the foundation to explore the practicality of RBIBD and optimal KP in the des...
Not AvailableThe purpose of this article is to propose unified methods of construction of resolvable...
A resolvable incomplete-block design in three replicates is abstractly equivalent to a design for th...
A resolvable incomplete-block design in three replicates is abstractly equivalent to a design for th...
Among R. C. Bose's many important contributions to the Design of Experiments are (i) the constructio...
AbstractThis paper defines a class of designs which generalise t-designs, resolvable designs, and or...
We develop in this thesis new methodologies for designing both computer experiments and physical exp...
In this thesis, we study the construction of designs for computer experiments and for screening expe...
Not AvailableIn this paper, the problem of obtaining efficient block designs for incomplete factoria...
At the beginning of an investigation there may be many conceivably important factors. It is often re...
Not Availablealpha-designs are essentially resolvable block designs. In a resolvable block design, t...
A common problem experimenters face is the choice of fractional factorial designs. Minimum aberratio...
Kurkjian and Zelen [1963] introduced a structural property, which was designated as Property A, of t...
A common problem experimenters face is the choice of fractional factorial designs. Minimum aberratio...
Affine-resolvable designs are constructed from orthogonal arrays and shown to be optimal among resol...
This overview provides the foundation to explore the practicality of RBIBD and optimal KP in the des...
Not AvailableThe purpose of this article is to propose unified methods of construction of resolvable...
A resolvable incomplete-block design in three replicates is abstractly equivalent to a design for th...
A resolvable incomplete-block design in three replicates is abstractly equivalent to a design for th...
Among R. C. Bose's many important contributions to the Design of Experiments are (i) the constructio...
AbstractThis paper defines a class of designs which generalise t-designs, resolvable designs, and or...
We develop in this thesis new methodologies for designing both computer experiments and physical exp...
In this thesis, we study the construction of designs for computer experiments and for screening expe...
Not AvailableIn this paper, the problem of obtaining efficient block designs for incomplete factoria...
At the beginning of an investigation there may be many conceivably important factors. It is often re...
Not Availablealpha-designs are essentially resolvable block designs. In a resolvable block design, t...
A common problem experimenters face is the choice of fractional factorial designs. Minimum aberratio...
Kurkjian and Zelen [1963] introduced a structural property, which was designated as Property A, of t...
A common problem experimenters face is the choice of fractional factorial designs. Minimum aberratio...
Affine-resolvable designs are constructed from orthogonal arrays and shown to be optimal among resol...
This overview provides the foundation to explore the practicality of RBIBD and optimal KP in the des...