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by stiff
4838 days ago
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There is a second paper where they specifically point out the differences between their approach and previous approaches using neural networks and it isn't only the number of layers that has changed but also the internal architecture of the network, the "responsibilities" of the layers, so again, it isn't just a traditionally trained MLP with a lot of layers: http://research.microsoft.com/pubs/157341/FeatureEngineering... |
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The only reference to differences I found is about differences between a DNN and a MaxEnt models, which is again not an argument for differences between DNNs and MLPs.
Could you point me to a concrete paragraph?, I would be happy to be mistaken in this regard.