Molecular representations for machine learning applications in chemistry

被引:39
|
作者
Raghunathan, Shampa [1 ]
Priyakumar, U. Deva [2 ]
机构
[1] Mahindra Univ, Ecole Cent Sch Engn, Hyderabad 500043, India
[2] Int Inst Informat Technol, Ctr Computat Nat Sci & Bioinformat, Hyderabad, India
关键词
ab initio; computational; Coulomb; descriptor; machine learning; potential; quantum mechanical; NEURAL-NETWORK POTENTIALS; ASSISTED SYNTHETIC ANALYSIS; CHEMICAL UNIVERSE; ENERGY SURFACES; DYNAMICS SIMULATIONS; FORCE-FIELD; PREDICTION; COMPUTER; GENERATION; ACCURACY;
D O I
10.1002/qua.26870
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Machine learning (ML) methods enable computers to address problems by learning from existing data. Such applications are becoming commonplace in molecular sciences. Interest in applying ML techniques across chemical compound space, from predicting properties to designing molecules and materials is in the surge. Especially, ML models have started to accelerate computational chemistry, and are often as accurate as state-of-the-art electronic/atomistic models. Being an integral part of the ML architecture, representation of a molecular entity, uniquely encoded, plays a crucial role to what extent an ML model would be accurately predicting the desired property. This review aims to demonstrate a hierarchy of representations which has been introduced, to capture all degrees of freedom of a molecule or an atom the best, to map the quantum mechanical properties. We discuss their diverse applications how they have been instrumental in harnessing the growing field of ML accelerated computational modeling.
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收藏
页数:21
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