I am trying to fit a logistic function to continuous-valued output (ranging from 0 to 52) for the purposes of prediction.
In particular, I am trying to effectively substitute the logistic function for the linear function in
I have tried to do
glm.fit=glm(formula='y~.',family=binomial,data=SData) but the function complains that my output is not between 0 and 1.
When I scale my output down between zero and 1, I get the error
non-integer #successes in a binomial glm!, which seems to indicate that for this kind of regression my outputs must be either 0 or 1, but not values in between.
What is the correct way to fit a logistic function (of the same form normally used for binary classification) to continuous data?