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Why do we need to use a base category (normalised to zero) when working with multinomial logit models?

Why do we need to report conditional logit coefficients?

Wouldn't marginal effects give us a better idea of the probability of belonging to a certain class?

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    $\begingroup$ One way to think about it: In a standard logit model, you don't have two equations, one for the "0" group and one for the "1" group; you just model the "1" group relative to the "0" group. $\endgroup$
    – Charlie
    Commented Jul 9, 2013 at 16:16

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You need a base category in order to interpret the log odds ratio. These are always in comparison with a reference category.

I am not sure about your other two questions: What do you mean by "reporting conditional log coefficient"?

You need the estimated coefficients of your output to calculate the probability of belonging to a certain class.

The marginal effects are not a probability of belonging to a class, but refer to the marginal probability change if a variable is increased by one unit. These marginal probability effects can be discrete or based on derivatives, in which case they only hold for small changes in your independent variable.

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