Explaining Neural Networks by Decoding Layer Activations

To derive explanations for deep learning models, ie. classifiers, we propose a `CLAssifier-DECoder' architecture (\emph{ClaDec}). \emph{ClaDec} allows to explain the output of an arbitrary layer. To this end, it uses a decoder that transforms the non-interpretable representation of the given layer to a representation that is more similar to training data. One can recognize what information a layer maintains by contrasting reconstructed images of \emph{ClaDec} with those of a conventional auto-encoder(AE) serving as reference.


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