Solid harmonic wavelet scattering for predictions of molecule properties

Michael Eickenberg(Université Paris Sciences et Lettres), Georgios Exarchakis(Université Paris Sciences et Lettres), Matthew Hirn(Michigan State University), Stéphane Mallat(Collège de France), Louis Thiry(Université Paris Sciences et Lettres)
The Journal of Chemical Physics
May 14, 2018
Cited by 83Open Access
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Abstract

We present a machine learning algorithm for the prediction of molecule properties inspired by ideas from density functional theory (DFT). Using Gaussian-type orbital functions, we create surrogate electronic densities of the molecule from which we compute invariant "solid harmonic scattering coefficients" that account for different types of interactions at different scales. Multilinear regressions of various physical properties of molecules are computed from these invariant coefficients. Numerical experiments show that these regressions have near state-of-the-art performance, even with relatively few training examples. Predictions over small sets of scattering coefficients can reach a DFT precision while being interpretable.


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