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Bias-Free Chemically Diverse Test Sets from Machine Learning
Author(s) -
Ellen T. Swann,
Michael Fernández,
Michelle L. Coote,
Amanda S. Barnard
Publication year - 2017
Publication title -
acs combinatorial science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.928
H-Index - 81
eISSN - 2156-8952
pISSN - 2156-8944
DOI - 10.1021/acscombsci.7b00087
Subject(s) - chemical space , cluster analysis , chemistry , artificial intelligence , benchmarking , computer science , machine learning , quantum chemistry , density functional theory , molecule , data mining , theoretical computer science , computational chemistry , drug discovery , biochemistry , supramolecular chemistry , organic chemistry , marketing , business
Current benchmarking methods in quantum chemistry rely on databases that are built using a chemist's intuition. It is not fully understood how diverse or representative these databases truly are. Multivariate statistical techniques like archetypal analysis and K-means clustering have previously been used to summarize large sets of nanoparticles however molecules are more diverse and not as easily characterized by descriptors. In this work, we compare three sets of descriptors based on the one-, two-, and three-dimensional structure of a molecule. Using data from the NIST Computational Chemistry Comparison and Benchmark Database and machine learning techniques, we demonstrate the functional relationship between these structural descriptors and the electronic energy of molecules. Archetypes and prototypes found with topological or Coulomb matrix descriptors can be used to identify smaller, statistically significant test sets that better capture the diversity of chemical space. We apply this same method to find a diverse subset of organic molecules to demonstrate how the methods can easily be reapplied to individual research projects. Finally, we use our bias-free test sets to assess the performance of density functional theory and quantum Monte Carlo methods.

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