5.3. A Model for Three Categories

First, some notation. Define

pi1 = the probability that WALLET=1 for person i,

pi2 = the probability that WALLET=2 for person i,

pi3 = the probability that WALLET=3 for person i.

Let xi be a column vector of explanatory variables for person i:

xi = [1 xi1 xi2 xi3 xi4]’

If this is unfamiliar, you can just think of xi as a single explanatory variable. In order to generalize the logit model to this three-category case, it’s tempting to consider writing three binary logit models, one for each outcome:

where the β’s are row vectors of coefficients. This turns out to be an unworkable approach, however. Because ...

Get Logistic Regression Using SAS®: Theory and Application now with the O’Reilly learning platform.

O’Reilly members experience books, live events, courses curated by job role, and more from O’Reilly and nearly 200 top publishers.