People fit models to data for the purpose of screening out unimportant
variables, or for quantifying the effects of important variables, or
for just approximating the shape of a response surface. In mixture exp
eriments containing other factors such as process variables and/or the
amount of the mixture, the typical model-fitting strategy employed is
to fit a combined model containing terms in the mixture components on
ly along with terms involving crossproducts between the mixture compon
ents and the other factors. Such a model form allows one to measure th
e blending properties of the mixture components and to determine if th
e blending properties differ when changing the settings of the process
variables and/or the amount of the mixture. The fitted model is asses
sed for adequacy of fit and, if found to be adequate, quite often the
model is then used to generate contour plots of the predicted mixture
surfaces at the settings of the other factors for display and interpre
tation purposes. In constrained-region mixture experiments, particular
ly when other factors (process variables or the amount of the mixture)
are present, potential pitfalls await the unsuspecting model-builder.
This paper discusses some of the potential pitfalls and illustrates t
hem using two examples taken from the literature. Listed at the end of
the paper are some general recommendations for designing experiments
and fitting models to data from mixture experiments containing other f
actors.