I am doing a 1-class classification with LibSVM wrapper in Weka. But the problem is during TESTING, even if I use the same TRAINING instances, I see most of them are classified as outliers (NaN) which is unreasonable (how this can happen?). If this is something to deal with parameter tuning, what parameters should I try tweaking?
A classifier needs at least two class values to "work". If all you have is labeled data with one label value(your one class value), then you need to get data that is not part of that class so that a classifier can function.