I guess I didn't explain it well enough. I have a number of training examples. They have 4 fields. label, v1, v2, group
The label is binary ("yes", "no") My understanding (Quite possible wrong.) was that there was a way to train the LR to estimate probabilities "per group" In pseudo-code it would be: lrm( label ~ v1 + v2, group_by(group) -N On 8/4/09 3:41 PM, David Winsemius wrote: > > On Aug 4, 2009, at 6:38 PM, Noah Silverman wrote: > >> Thanks David, >> >> But HOW do I indicate the "grouping" variable in the formula? > > Hard to tell. You have told us absolutely nothing about the problem. > Discrete variables cause no problems in formulas. Perhaps one of : > > ?factor > ?cut > ?quantile > >> >> Thanks! >> >> -N >> >> On 8/4/09 3:37 PM, David Winsemius wrote: >>> >>> On Aug 4, 2009, at 6:33 PM, Noah Silverman wrote: >>> >>>> Hi, >>>> >>>> Trying to setup a logistic regression model. (Something new to me. I >>>> usually use SVM.) >>>> >>>> The person explaining the concept explained to me that I can include a >>>> "group" variable so that the probabilities predicted by the model will >>>> be "per group" >>>> >>>> Does this make sense to anyone? >>> >>> Yes. >>> >>>> If so, how would I implement this? >>>> Using the glm or lrm function? >>> >>> Yes. >>> > > David Winsemius, MD > Heritage Laboratories > West Hartford, CT > [[alternative HTML version deleted]] ______________________________________________ R-help@r-project.org mailing list https://stat.ethz.ch/mailman/listinfo/r-help PLEASE do read the posting guide http://www.R-project.org/posting-guide.html and provide commented, minimal, self-contained, reproducible code.