Deakin University
Browse
tran-committeemachine-2018.pdf (1.24 MB)

Committee machine that votes for similarity between materials

Download (1.24 MB)
journal contribution
posted on 2018-11-01, 00:00 authored by Duong-Nguyen Nguyen, Tien-Lam Pham, Viet-Cuong Nguyen, Tuan-Dung Ho, Truyen TranTruyen Tran, Keisuke Takahashi, Hieu-Chi Dam
A method has been developed to measure the similarity between materials, focusing on specific physical properties. The information obtained can be utilized to understand the underlying mechanisms and support the prediction of the physical properties of materials. The method consists of three steps: variable evaluation based on nonlinear regression, regression-based clustering, and similarity measurement with a committee machine constructed from the clustering results. Three data sets of well characterized crystalline materials represented by critical atomic predicting variables are used as test beds. Herein, the focus is on the formation energy, lattice parameter and Curie temperature of the examined materials. Based on the information obtained on the similarities between the materials, a hierarchical clustering technique is applied to learn the cluster structures of the materials that facilitate interpretation of the mechanism, and an improvement in the regression models is introduced to predict the physical properties of the materials. The experiments show that rational and meaningful group structures can be obtained and that the prediction accuracy of the materials' physical properties can be significantly increased, confirming the rationality of the proposed similarity measure.

History

Journal

IUCrJ

Volume

5

Issue

6

Pagination

830 - 840

Publisher

International Union of Crystallography

Location

Chester, Eng.

ISSN

2052-2525

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2018, International Union of Crystallography