# How to predict with multinom() in R

I'm trying to calculate predicted probabilities using specific values, but R shows the following error:

``````Error in model.frame.default(Terms, newdata, na.action = na.omit, xlev = object\$xlevels) :
variable lengths differ (found for 'x')
'newdata' had 1 rows but variable(s) found have 513 rows
``````

This is what I was trying to do: x1 is a factor with 12 levels, and x2 is also a factor with 3 levels.

``````res4 <- multinom(y ~ x1 + x2 + x3 + x4 + x5 + x6 + x7 + x8 + x9 - 1, data=dta, Hess=T)

nd <- data.frame(x11=0.10331384, x12=0.07992203, x13=0.06237817, x14=0.03313840, x15=0.12280702, x16=0.07407407, x17=0.07407407, x18=0.10331384, x19=0.08966862, x110=0.07017544, x111=0.15009747, x112=0.03703704, x22=1, x23=0, x3=1, x4=1, x5=mean(x5), x6=mean(x6, na.rm=T), x7=mean(x7), x8=mean(x8), x9=mean(x9))

predict(res4, type="probs", newdata=nd)
``````

Any help?

-
Can you give us a small sample of `dta` with `dput(head(dta))`. –  nograpes Jul 30 '12 at 21:20
Also, it looks like you fit the model for nine `x`s, but you are trying to predict with more than nine variables. You should definitely only have nine variables in your `nd` variable. –  nograpes Jul 30 '12 at 21:30

You `nd` `data.frame` should have nine variables, one for each of your x's.
``````library(nnet)