I'm trying to resolve a regression problem using Libsvm. I divided my dataset in training (170 instances) and test set (20 instances). I tried to run both SVM Regression type (epsilon-SVR and nu-SVR). In both cases, when I use a Linear Kernel I obtain different predicted values for the test set. But if I use the RBF Kernel then I get exactly the same value for each instance of the test set, moreover this happens with both SVR types. Can someone explain me why the usage of RBF Kernel leads to just one predicted value?
"Can someone explain me why the usage of RBF Kernel leads to just one predicted value?"
Probably the parameters that you are using for the RBF kernel implies an hypersphere with a radius that is too big. I would recommend you to try with a bigger value of gamma to reduce the radius of the RBF kernel.