NN II. Convolutional networks on graphs for learning molecular fingerprints
Harvard Intelligent Probabilistic Systems, Harvard University
Predicting properties of molecules requires functions that take graphs as inputs. Molecular graphs are usually preprocessed using hash-based functions to produce fixed-size fingerprint vectors, which are used as features for making predictions. We introduce a convolutional neural network that operates directly on graphs, allowing end-to-end learning of the feature pipeline. This architecture generalizes standard molecular fingerprints. We show that these data-driven features are more interpretable, and have better predictive performance on a variety of tasks.