I am trying to do some classification task with python and SVM.
From collected data I extracted the feature vectors for each class and created a training set. The feature vectors have n-dimensions(39 or more). So, say for 2 classes I have a set of 39-d feature vectors and a single array of class labels corresponding to each entry in the feature vector.Currently, I am using mlpy and doing something like this:
import numpy as np import mlpy svm=mlpy.Svm('gaussian') #tried a linear kernel too but not having the convergence instance= np.vstack((featurevector1,featurevector1)) label=np.hstack((np.ones((1,len(featurevector1),dtype=int),-1*np.ones((1,len(featurevector2),dtype=int)))
#Assigning a label(+1/-1) for each entry in instance, (+1 for entries coming from #featurevector 1 and -1 for featurevector2
svm.compute(instance,label) #it converges and outputs 1 svm.predict(testdata) #This one says all class label are 1 only whereas I ve testing data from both classes
Am I doing some mistake here? Or should I use some other library? Please help.