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Interpretable Deep Learning in Drug Discovery
[article]
2019
arXiv
pre-print
Without any means of interpretation, neural networks that predict molecular properties and bioactivities are merely black boxes. We will unravel these black boxes and will demonstrate approaches to understand the learned representations which are hidden inside these models. We show how single neurons can be interpreted as classifiers which determine the presence or absence of pharmacophore- or toxicophore-like structures, thereby generating new insights and relevant knowledge for chemistry,
arXiv:1903.02788v2
fatcat:ub5tevhaanct7evmvd5nnfuphy