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.

Comments

There's unfortunately not much to read here yet...

Discover the Best of Machine Learning.

Ever having issues keeping up with everything that's going on in Machine Learning? That's where we help. We're sending out a weekly digest, highlighting the Best of Machine Learning.

Join over 900 Machine Learning Engineers receiving our weekly digest.

Best of Machine LearningBest of Machine Learning

Discover the best guides, books, papers and news in Machine Learning, once per week.

Twitter