I'm trying to build an app to detect images which are advertisements from the webpages. Once I detect those I`ll not be allowing those to be displayed on the client side.
From the help that I got on this Stackoverflow question, I thought SVM is the best approach to my aim.
So, I have coded SVM and an SMO myself. The dataset which I have got from UCI data repository has 3280 instances ( Link to Dataset- http://archive.ics.uci.edu/ml/datasets/Internet+Advertisements )where around 400 of them are from class representing Advertisement images and rest of them representing non-advertisement images.
Right now I'm taking the first 2800 input sets and training the SVM. But after looking at the accuracy rate I realised that most of those 2800 input sets are from non-advertisement image class. So I`m getting very good accuracy for that class.
So what can I do here? About how many input set shall I give to SVM to train and how many of them for each class?
Thanks. Cheers. ( Basically made a new question because the context was different from my previous question. Optimization of Neural Network input data )
Thanks for the reply. I want to check whether I`m deriving the C values for ad and non-ad class correctly or not. Please give me feedback on this.
Or you u can see the doc version here. http://amolkimi.0fees.net/weightedSVM.doc
You can see graph of y1 eqaul to y2 here http://i572.photobucket.com/albums/ss165/amoljoshi28/y1y2.jpg
and y1 not equal to y2 here http://i572.photobucket.com/albums/ss165/amoljoshi28/y1y2-1.jpg