SchNet: A continuous-filter convolutional neural network for modeling quantum interactions

Schütt, Kristof, Kindermans, Pieter-Jan, Felix, Huziel Enoc Sauceda, Chmiela, Stefan, Tkatchenko, Alexandre, Müller, Klaus-Robert

Neural Information Processing Systems 

Deep learning has the potential to revolutionize quantum chemistry as it is ideally suited to learn representations for structured data and speed up the exploration of chemical space. While convolutional neural networks have proven to be the first choice for images, audio and video data, the atoms in molecules are not restricted to a grid. Instead, their precise locations contain essential physical information, that would get lost if discretized. Thus, we propose to use continuous-filter convolutional layers to be able to model local correlations without requiring the data to lie on a grid. We apply those layers in SchNet: a novel deep learning architecture modeling quantum interactions in molecules.