| Literature DB >> 26428400 |
G Pilania1, P V Balachandran2, J E Gubernatis2, T Lookman2.
Abstract
We explored the use of machine learning methods for classifying whether a particular ABO3 chemistry forms a perovskite or non-perovskite structured solid. Starting with three sets of feature pairs (the tolerance and octahedral factors, the A and B ionic radii relative to the radius of O, and the bond valence distances between the A and B ions from the O atoms), we used machine learning to create a hyper-dimensional partial dependency structure plot using all three feature pairs or any two of them. Doing so increased the accuracy of our predictions by 2-3 percentage points over using any one pair. We also included the Mendeleev numbers of the A and B atoms to this set of feature pairs. Doing this and using the capabilities of our machine learning algorithm, the gradient tree boosting classifier, enabled us to generate a new type of structure plot that has the simplicity of one based on using just the Mendeleev numbers, but with the added advantages of having a higher accuracy and providing a measure of likelihood of the predicted structure.Entities:
Keywords: bond valence; gradient tree boosting classifier; machine learning study; perovskites
Year: 2015 PMID: 26428400 DOI: 10.1107/S2052520615013979
Source DB: PubMed Journal: Acta Crystallogr B Struct Sci Cryst Eng Mater ISSN: 2052-5192