多孔性
子空间拓扑
笼子
生物系统
代表(政治)
材料科学
分子
吸附
编码(内存)
计算机科学
集合(抽象数据类型)
土壤孔隙空间特征
人工智能
算法
拓扑(电路)
化学
数学
复合材料
组合数学
政治
有机化学
政治学
程序设计语言
法学
生物
作者
Árni Sturluson,Melanie T. Huynh,Arthur H. P. York,Cory M. Simon
出处
期刊:ACS central science
[American Chemical Society]
日期:2018-12-13
卷期号:4 (12): 1663-1676
被引量:24
标识
DOI:10.1021/acscentsci.8b00638
摘要
Porous organic cage molecules harbor nanosized cavities that can selectively adsorb gas molecules, lending them applications in separations and sensing. The geometry of the cavity strongly influences their adsorptive selectivity. For comparing cages and predicting their adsorption properties, we embed/encode a set of 74 porous organic cage molecules into a low-dimensional, latent "cage space" on the basis of their intrinsic porosity. We first computationally scan each cage to generate a three-dimensional (3D) image of its porosity. Leveraging the singular value decomposition, in an unsupervised manner, we then learn across all cages an approximate, lower-dimensional subspace in which the 3D porosity images congregate. The "eigencages" are the set of orthogonal, characteristic 3D porosity images that span this lower-dimensional subspace, ordered in terms of importance. A latent representation/encoding of each cage follows by approximately expressing it as a combination of the eigencages. We show that the learned encoding captures salient features of the cavities of porous cages and is predictive of properties of the cages that arise from cavity shape. Our methods could be applied to learn latent representations of cavities within other classes of porous materials and of shapes of molecules in general.
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