作者
Aditi S Krishnapriyan, Maciej Haranczyk, Dmitriy Morozov
发表日期
2020/4/6
期刊
The Journal of Physical Chemistry C
卷号
124
期号
17
页码范围
9360-9368
出版商
American Chemical Society
简介
Machine learning has emerged as an attractive alternative to experiments and simulations for predicting material properties. Usually, such an approach relies on specific domain knowledge for feature design: each learning target requires careful selection of features that an expert recognizes as important for the specific task. The major drawback of this approach is that computation of only a few structural features has been implemented so far, and it is difficult to tell a priori which features are important for a particular application. The latter problem has been empirically observed for predictors of guest uptake in nanoporous materials: local and global porosity features become dominant descriptors at low and high pressures, respectively. We investigate a feature representation of materials using tools from topological data analysis. Specifically, we use persistent homology to describe the geometry of nanoporous …
引用总数
202020212022202320248814812
学术搜索中的文章
AS Krishnapriyan, M Haranczyk, D Morozov - The Journal of Physical Chemistry C, 2020