Optimal Designs for Mixed-Effects Models with Random Nested
Factors
Statistical Engineering Division
Seminar Series
Optimal Designs for Mixed-Effects Models with Random Nested Factors
Ivelisse Aviles
Northwestern University
The problem of experimental design for the purpose of estimating
the fixed effects and the variance components corresponding to
random nested factors is a widely applicable problem in industry.
Random nested factors arise from quantity designations such as lot
or batch and from sampling and measurement procedures. We
introduce a new class of designs, called assembled designs, where
all the nested factors are nested under the treatment combinations
of the crossed factors. We provide parameters and notation for
describing and enumerating assembled designs. Using maximum
likelihood estimation and the D-optimality criterion, we
show that, for most practical situations, designs that are as
balanced as possible are optimal for estimating both fixed
effects and variance components in a mixed-effects mpdel.
Date created: 6/5/2001
Last updated: 6/21/2001
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