I am using JMP Pro 14.1 for fitting a multivariate logistic regression. The response variable Y is nominal, and all the columns in design matrix X is continuous numeric. I have some questions about feature selection and inverse prediction.
1) When I use stepwise logistic regression for feature selection, I cannot find the option for "stepwise regression" from Personality drop-down list. Is stepwise regression not applied to the case when Y is nominal?
2) If stepwise logistic regression is not applicable with JMP, then is there a way to do cross-validation for logistic regression?
3) How to illustrate the results of inverse prediction for multivariate logistic regression? Every time I got one inverse prediction window for one variable (the one I put blank value), what are the default values for the other variables? Does that mean when other variables are fixed we have 95% confidence that when the variable of interest is within the predicted window we can have P(Y=1)=0.9 (or other values)?