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"#statstab #164 Ordinal regression models to analyze Likert scale data Thoughts: One of the clearest tutorial for ordinal, cumulative (probit) models I've seen. Reports probabilities and expected mean ratinga w/ plots! #ordinal #brms #likert #probit #r dibsmethodsmeetings.github.io/ordinal-regr..."
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