Identifying the Most Appropriate Order for Categorical Responses
Categorical responses arise naturally from many scientific disciplines. Under many circumstances, there is no predetermined order for the response categories and the response has to be modeled as nominal. In this paper we regard the order of response categories as part of the statistical model and show that the true order when it exists can be selected using likelihood-based model selection criteria. For prediction purposes, a statistical model with a chosen order may perform better than models based on nominal responses even if a true order may not exist. For multinomial logistic models widely used for categorical responses, we identify theoretically equivalent orders that are indistinguishable based on likelihood. We use simulation studies and real data analysis to confirm the needs and benefits of choosing the most appropriate order for categorical responses.
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