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 ) 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.

enter image description here

Or you u can see the doc version here.

You can see graph of y1 eqaul to y2 here enter image description here

and y1 not equal to y2 here enter image description here


There are two ways of going about this. One would be to balance the training data so it includes an equal number of advertisement and non-advertisement images. This could be done by either oversampling the 400 advertisement images or undersampling the thousands of non-advertisement images. Since training time can increase dramatically with the number of data points used, you should probably first try undersampling the non-advertisement images and create a training set with the 400 ad images and 400 randomly selected non-advertisements.

The other solution would be to use a weighted SVM so that margin errors for the ad images are weighted more heavily than those for non-ads, for the package libSVM this is done with the -wi flag. From your description of the data, you could try weighing the ad images about 7 times more heavily than the non-ads.

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    Could you explain why you would balance the training data? I thought SVMs choose the decision surface with the maximum distance from the training patterns. Why would it matter how many other training patterns are behind that decision surface? And how would oversampling patterns help? (I always thought weighted SVMs were meant to model different costs for misclassification to different classes and/or a priori probabilities - but the OP said nothing about costs or a priori probabilites) – Niki Feb 18 '10 at 22:34
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    @nikie - Hard SVMs choose the decision surface with the maximum separation of the training patterns. But, once you allow for margin and classification errors (i.e., when you introduce C), SVMs trade-off maximizing the margin size with allowing some points to either be in the margin or even misclassified. With unbalanced data, a large portion of the data points from the smaller class can end up in the margin or worse. Up weighting them or balancing the data set essentially fixes this. – dmcer Feb 19 '10 at 1:43
  • @dmcer: Thanks for the explanation. I tried to down sample non-advertisement to about 600. But the accuracy was very poor. And when I trained using 400 ad and 2400 non-ad. Yes, the training time was very lengthy, but then I got around 95% accuracy in classifying non-advertisements and advertisement classification accuracy dropped to very very low. I guess the effect was due to non-advertisement set dominating on the advertisement set. So will this weighted SVM work in this case? and am I doing something wrong here since non-ad accuracy is very good when i take 2800 training samples? – Amol Joshi Feb 19 '10 at 11:36
  • @amol: Weighted SVM is probably a good thing to try next. With it, you'll be simulating upsampling the number of ad images, but without actually increasing the size of the training set. Are you still using your own implementation of SVM? If so, you might want to temporarily switch to something like libSVM or SVM light, at least until you figure out what SVM configuration works well on your data. That way, you will be able to pull apart configuration issues and classifier implementation bugs. – dmcer Feb 19 '10 at 21:35
  • Thanks for the suggestion. Ill try to fix up the configuration with LibSVM. Though eventually Ill have to implement everything myself. However I cant try LibSVM right now. I got exam next week and Ill rejoin work after that. Hopefully I can get your assistance then. Cheers. – Amol Joshi Feb 20 '10 at 15:56

The required size of your training set depends on the sparseness of the feature space. As far as I can see, you are not discussing what image features you have chose to use. Before you can train, you need to to convert each image into a vector of numbers (features) that describe the image, hopefully capturing the aspects that you care about.

Oh, and unless you are reimplementing SVM for sport, I'd recomment just using libsvm,

  • I did nt understand what you meant by sparseness of the feature space and how exactly will it decide size of my training set. Let me make myself little clear here. 1. Yes, Im only doing text analysis for predicting the image as advertisement/non-advertisement image. 2. Im forced not to use these libraries on the internet and implement SVM on our own. I have already coded most of SVM and can test accuracy of its output. Thanks. – – Amol Joshi Feb 17 '10 at 21:02
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    Let me try to be more clear. How do you get from an image to the vector of number that you input to your SVM for that image? Surely you don't just give it the red, green, and blue color of each pixel in the image? – Vebjorn Ljosa Feb 18 '10 at 12:23
  • Im doing text analysis to get different attributes of that image. Using that as training set ( which is already there in the UCI repository ) Im training my svm. Now the problem is advertisement training set count is only 400 compared to the non-advertisement training set count which is about 2800. So now 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. – Amol Joshi Feb 19 '10 at 11:23

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