Column Scores
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چکیده
منابع مشابه
Bayesian Model Comparison for the Order Restricted RC Association Model
Association models constitute an attractive alternative to the usual log-linear models for modeling the dependence between classification variables. They impose special structure on the underlying association by assigning scores on the levels of each classification variable, which can be fixed or parametric. Under the general row-column (RC) association model, both row and column scores are unk...
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