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Abstract
The purported "black box" nature of neural networks is a barrier to adoption
in applications where interpretability is essential. Here we present DeepLIFT
(Deep Learning Important FeaTures), a method for decomposing the output
prediction of a neural network on a specific input by backpropagating the
contributions of all neurons in the network to every feature of the input.
DeepLIFT compares the activation of each neuron to its 'reference activation'
and assigns contribution scores according to the difference. By optionally
giving separate consideration to positive and negative contributions, DeepLIFT
can also reveal dependencies which are missed by other approaches. Scores can
be computed efficiently in a single backward pass. We apply DeepLIFT to models
trained on MNIST and simulated genomic data, and show significant advantages
over gradient-based methods. Video tutorial: http://goo.gl/qKb7pL, ICML slides:
bit.ly/deeplifticmlslides, ICML talk: https://vimeo.com/238275076, code:
http://goo.gl/RM8jvH.