I have been using libsvm. It produces some good results (95% on positives, 94% on negatives). When I examine the ones that it gets incorrect, however, I am confused about why it got them wrong. How do I determine what it is doing wrong? (More importantly, how do I explain it to my boss?). Some of the testing inputs it gets wrong are very close (visually) to some of the testing inputs it gets right.
About my problem: I am looking at images, 32x32 pixels, 8-bit greyscale. I am evaluating different feature detectors and using them as a dense representation (i.e. at every pixel) of the image. Hence, my feature length is often 1024; some of the feature detectors have multiple outputs, sometimes I do not use every pixel but every 3rd or 5th, etc.. It is a binary classification task, looking for figures in the image; for example, I am trying to find a square, with various letters for negatives. The SVM does well. But sometimes, it will classify a T as a square, and I don't know why. If I'm using probabilities, then sometimes the probability is quite high. What do I do to get an insight into what it is doing and why?