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.

Basically I'm using Back-propagation algorithm to train the neural network using the dataset given here: http://archive.ics.uci.edu/ml/datasets/Internet+Advertisements.

But in that dataset no. of attributes are very high. In fact one of the mentors of the project told me that If you train the Neural Network with that many attributes, it'll take lots of time to get trained. So is there a way to optimize the input dataset? Or I just have to use that many attributes?


1558 is actually a modest number of features/attributes. The # of instances(3279) is also small. The problem is not on the dataset side, but on the training algorithm side.

ANN is slow in training, I'd suggest you to use a logistic regression or svm. Both of them are very fast to train. Especially, svm has a lot of fast algorithms.

In this dataset, you are actually analyzing text, but not image. I think a linear family classifier, i.e. logistic regression or svm, is better for your job.

If you are using for production and you cannot use open source code. Logistic regression is very easy to implement compared to a good ANN and SVM.

If you decide to use logistic regression or SVM, I can future recommend some articles or source code for you to refer.

  • Sir, My project group wanted to use Neural Network for this? Do I have any options with Neural Network? Can I get some assistance from somewhere about this? Can I use logistic regression like algorithms with Neural Network? And more importantly are there any of that kind? – Amol Joshi Jan 3 '10 at 15:26
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    Neural Networks are not great a highly dimensional problem spaces. As for making it go faster try using a GPU or reducing the number of features or examples. In the end an ann is the wrong tool for the job. – Steve Severance Jan 6 '10 at 21:45
  • Okay now I know that ANN wont be the right tool,so I have decided to use SVM now. It ll be great if you could recommend some articles about it`s use in my project. Also I wanted to ask u that whether I should first implement. PCA before implementing SVM. Thanks. Cheers! – Amol Joshi Jan 8 '10 at 9:02
  • doing dimensionality reduction(PCA here) before SVM usually does not improve any accuracy! Because SVM is able to do feature selection. The other reason is that SVM is fast enough. First you want to have a look at libsvm package, it is a well designed, well written, well tested and production quality SVM package. Its copyright is here: csie.ntu.edu.tw/~cjlin/libsvm/COPYRIGHT. It uses SMO optimization algorithm, which is not hard to implement if you need to implement this algorithm yourself. Refer to SVM's wikipedia page for details. please leave comments if you need more help :) – Yin Zhu Jan 8 '10 at 9:47
  • Ok. Ill have to write the code by myself. Basically Im facing following issues while coding. 1. The first few attribute values in the dataset are height, width and the aspect ration which are floating values. So can i mix use them along with the other attribute values which are 0/1? 2. While implementing SMO optimization algorithm can I get away with it if I implement simplified SMO given by the stanford ( stanford.edu/class/cs229/materials/smo.ps ). They are saying that the simplified one works for their problem. Do I have to implement the full SMO given in the John Patt paper? – Amol Joshi Jan 10 '10 at 18:56

If you're actually using a backpropagation network with 1558 input nodes and only 3279 samples, then the training time is the least of your problems: Even if you have a very small network with only one hidden layer containing 10 neurons, you have 1558*10 weights between the input layer and the hidden layer. How can you expect to get a good estimate for 15580 degrees of freedom from only 3279 samples? (And that simple calculation doesn't even take the "curse of dimensionality" into account)

You have to analyze your data to find out how to optimize it. Try to understand your input data: Which (tuples of) features are (jointly) statistically significant? (use standard statistical methods for this) Are some features redundant? (Principal component analysis is a good stating point for this.) Don't expect the artificial neural network to do that work for you.

Also: remeber Duda&Hart's famous "no-free-lunch-theorem": No classification algorithm works for every problem. And for any classification algorithm X, there is a problem where flipping a coin leads to better results than X. If you take this into account, deciding what algorithm to use before analyzing your data might not be a smart idea. You might well have picked the algorithm that actually performs worse than blind guessing on your specific problem! (By the way: Duda&Hart&Storks's book about pattern classification is a great starting point to learn about this, if you haven't read it yet.)


aplly a seperate ANN for each category of features for example 457 inputs 1 output for url terms ( ANN1 ) 495 inputs 1 output for origurl ( ANN2 ) ...

then train all of them use another main ANN to join results

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