In a multinomial logistic regression, one uses a set of covariates (x1, x2, ... xn) to predict the value of a discrete variable y that, for instance, can take the values of "outcome a", "outcome b", and "outcome c". In R, the most popular way to fit a multinomial logit is to use the multinom function under the nnet package.

When running model <- multinom(outcome ~ x1 + x2 + x3, data=data), summary(model) would always present the estimations of each outcome together:

               (Intercept)          x1           x2             x3 
outcome b       0.7990265   -0.9426088    0.2295875    -0.01346151
outcome c       0.6516952   -1.0174237    0.3367977    -0.43912425

My question is: how do we present statistical estimations that predict "outcome b" and "outcome c" (assuming "a" is the base category) separately?

Ideally, I would like to use stargazer() and present one coefficient table for outcome b, and another table for outcome c, any suggestions are appreciated!


Convert the Coefficients table into data frame and then delete/remove not needed rows maybe?

Like in the following example:

lmfit <- lm(mpg ~ wt + cyl, mtcars)
ab = summary(lmfit)
bc = ab$coefficients
bc = as.data.frame(bc)

wt = bc[c(-1, -3), ]

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