Gd. Williamson et M. Haber, MODELS FOR 3-DIMENSIONAL CONTINGENCY-TABLES WITH COMPLETELY AND PARTIALLY CROSS-CLASSIFIED DATA, Biometrics, 50(1), 1994, pp. 194-203
We develop models for three-dimensional contingency tables containing
both completely and partially cross-classified data for which one of t
he variables is regarded as dependent and the other two variables are
regarded as independent variables. Parameters of interest include the
cell probabilities and the probabilities that the observations on one
or both independent variables are missing. The models allow inferences
on these two sets of probabilities to be made independently. Maximum
likelihood methods for estimating and testing hypotheses regarding the
se parameters are described, along with conditional goodness-of-fit te
st statistics, which display a convenient additivity property. The met
hodology is applied to cervical cancer data from a case-control study
performed in Atlanta, Georgia, 1985-1988.