Thanks Steve, 1) That helps. Exactly what I need.
2) I'm coming from RapidMinder, so am still getting used to how data is handled in R. (In RM, everything is like the R data.frame and predictions are automatically appended as new columns to the data.) What I'd like is this: Starting with data frame of: label, v1, v2, v3 After svm prediction, ending up with data frame of: label, v1, v2, v3, prediction, probability Thanks again! -N On 8/3/09 8:15 PM, Steve Lianoglou wrote: > Hi, > > On Aug 3, 2009, at 10:55 PM, Noah Silverman wrote: > >> Hello, >> >> I'm using the e1071 package for training an SVM. It seems to be working >> well. >> >> This question has two parts: >> >> 1) Once I've trained an SVM model, I want to USE it within R at a later >> date to predict various new data. I see the write.svm command, but >> don't know how to LOAD the model back in so that I can use it tomorrow. >> How can I do this? > > You can circumvent the e1071-specific write functions and just use R's > builtin save() method. Eg, > > R> save(mymodel, file='mymodel.rda') > > You can load it later like so: > > R> load('mymodel.rda') > >> 2) I would like to add the prediction values(confidence) as a column in >> my original data.frame. (Again, to be used for more analysis at a later >> date.) I am using "predictions <- prediction(model,traindata)" and that >> gives me a huge object with all the predictions. Is there a single >> command that would just add the predictions, or do I need to do some >> clever data manipulation? > > What do you mean "a huge object"? By default you should just be > getting a vector of length Nx1 where N is the number of examples to > predict over, and the value is the class it belongs to -- which seems > like what you're after. > > If you call predict.svm with decision.values=TRUE, you'll get an N x > NUMBER_OF_CLASSES matrix. In that case, what do you mean by "a command > that just add[s] the predictions"? If you want to add all decision > values to your original data, you can use cbind. If you want to return > the max value for each data point, play with the apply function and > its MARGIN parameter along with the max/which.max functions -- but if > you're just adding the max value, you're losing the decision label. > > Anyway -- the predict.svm function just returns a vector/matrix. You > can use the standard R vector/matrix manipulation methods to do what > you want. If you're still having trouble with that, please post an > example of what you're after -- and simply use the code/data from the > ?predict.svm example section so we can play along. > > -steve > > -- > Steve Lianoglou > Graduate Student: Computational Systems Biology > | Memorial Sloan-Kettering Cancer Center > | Weill Medical College of Cornell University > Contact Info: http://cbio.mskcc.org/~lianos/contact > [[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.