Artigo Revisado por pares

Understanding and interpreting generalized ordered logit models

2016; Taylor & Francis; Volume: 40; Issue: 1 Linguagem: Inglês

10.1080/0022250x.2015.1112384

ISSN

1545-5874

Autores

Richard Williams,

Tópico(s)

Advanced Causal Inference Techniques

Resumo

When outcome variables are ordinal rather than continuous, the ordered logit model, aka the proportional odds model (ologit/po), is a popular analytical method. However, generalized ordered logit/partial proportional odds models (gologit/ppo) are often a superior alternative. Gologit/ppo models can be less restrictive than proportional odds models and more parsimonious than methods that ignore the ordering of categories altogether. However, the use of gologit/ppo models has itself been problematic or at least sub-optimal. Researchers typically note that such models fit better but fail to explain why the ordered logit model was inadequate or the substantive insights gained by using the gologit alternative. This paper uses both hypothetical examples and data from the 2012 European Social Survey to address these shortcomings.

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