I am using support vector machines for a multiclass problem. The data I am working is very similar to this:
Group=as.factor(c(rep(1,15),rep(2,15),rep(3,15),rep(4,15))) Taxes=c(runif(15,min=10,max=100),runif(15,min=200,max=300),runif(15,min=500,max=600),runif(15,min=700,max=800)) Salary=c(runif(15,min=100,max=300),runif(15,min=500,max=800),runif(15,min=700,max=900),runif(15,min=900,max=1000)) Education.level=as.factor(c(rep(1,15),rep(2,15),rep(3,15),rep(4,10),rep(5,5))) Data=data.frame(Group,Taxes,Salary,Education.level)
My dependant variable is
Group then I use it for a model with SVM considering e1071 package:
library(e1071) model = svm(Group~.,data=Data,method = "C-classification",kernel = "radial",cost = 10, gamma = 0.1) Data$pred<-predict(model,type='response',Data)
All is perfect with the model but I don't know how to measure accuracy for SVM in the multiclass. e1071 package when dependant variable has more than two class uses one-against-one voting scheme where a binary SVM is build considering pairs of class (for example 1 and 2, 1 and 3, 1 and 4).
QUESTION: Is posible to get AUROC value for each binary SVM that build the global model. AUROC is a good measure for a binary classifier (AUROC for svm model with 1 and 2, 1 and 3, 1 and 4)
I don't know if it is posible or I have to do it manually, or maybe there is another measure for accuracy in this case. For me is imposible to compute AUROC for the global model because this function was made only for binary classification. Thanks.