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Where is ANN classification (regression) better than SVM? Some real-world examples?

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There are many applications where they're better, many applications where they're comparable, many applications where they are worse. It also depends on who you ask. It is hard to say this type of data or that type of data/application.

An example where ANN, in particular convolutional neural networks, work better than SVMs would be digit classification on MNIST. Another such case is the work of Geoff Hinton's group on speech recognition using Deep Belief Networks

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I am just finishing some out-of-the-box comparison between support vector machines and neural networks on several popular regression- and classification datasets - first results in short: svms learn fast and predict slow - neural networks learn slow but predict fast and have very lightweight models. Concerning accuracy/loss, both methods seem to be on par.

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after a year, I am unable to access the url. I can assume from title that I am missing a good text. –  akshayb Jun 3 '13 at 6:54
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Recently I have read a paper of proving the theoretical equivalence between ANN and SVM(http://www.staff.ncl.ac.uk/peter.andras/PAnpl2002.pdf). However, ANN is usually slower than SVM.

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