Multinomial Response Models
may be used with purely qualitative or nominal data, and then move on to models for ordinal data, where the response categories are ordered. 6.1 The Nature of Multinomial Data Let me start by introducing a simple dataset that will be used to illustrate the multinomial distribution and multinomial response models. 6.1.1 The Contraceptive Use Data
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