I am using libsvm matlab/python for a classification problem working with pairwise connections in fMRIs and am having several issues. 1) scaling the data seg faults. When I run easy.py, I get this error message (more useful than "segmentation fault"):
$:~/Documents/MATLAB/libsvm-3.17/libsvm-3.17/tools> python easy.py ~/Projects/Autism/fcon/data/labelFtrain.txt ~/Projects/Autism/fcon/data/labelFtest.txt Scaling training data... /bin/sh: line 1: 18870 Segmentation fault ../svm-scale -s "labelFtrain.txt.range" "/home/sci/mthromatka/Projects/Autism/fcon/data labelFtrain.txt" > "labelFtrain.txt.scale" Cross validation... Traceback (most recent call last): File "./grid.py", line 266, in run if rate is None: raise RuntimeError('get no rate') RuntimeError: get no rate worker local quit.
the max of the data is around 700 and the min is ~ -.8, although most data falls between 0 and .1
2) Regardless of which values I use for parameters C and gamma I get the same accuracy for my testing data
I also have many more features than the number of instances. With such a skewed range, I realize that scaling could get rid of most differences, but I am not sure what to do then as the (only) accuracy I receive is not sufficient and I would like to improve this as much as possible (surprise).