Literature DB >> 31005087

Unsupervised machine learning in atomistic simulations, between predictions and understanding.

Michele Ceriotti1.   

Abstract

Automated analyses of the outcome of a simulation have been an important part of atomistic modeling since the early days, addressing the need of linking the behavior of individual atoms and the collective properties that are usually the final quantity of interest. Methods such as clustering and dimensionality reduction have been used to provide a simplified, coarse-grained representation of the structure and dynamics of complex systems from proteins to nanoparticles. In recent years, the rise of machine learning has led to an even more widespread use of these algorithms in atomistic modeling and to consider different classification and inference techniques as part of a coherent toolbox of data-driven approaches. This perspective briefly reviews some of the unsupervised machine-learning methods-that are geared toward classification and coarse-graining of molecular simulations-seen in relation to the fundamental mathematical concepts that underlie all machine-learning techniques. It discusses the importance of using concise yet complete representations of atomic structures as the starting point of the analyses and highlights the risk of introducing preconceived biases when using machine learning to rationalize and understand structure-property relations. Supervised machine-learning techniques that explicitly attempt to predict the properties of a material given its structure are less susceptible to such biases. Current developments in the field suggest that using these two classes of approaches side-by-side and in a fully integrated mode, while keeping in mind the relations between the data analysis framework and the fundamental physical principles, will be key to realizing the full potential of machine learning to help understand the behavior of complex molecules and materials.

Entities:  

Year:  2019        PMID: 31005087     DOI: 10.1063/1.5091842

Source DB:  PubMed          Journal:  J Chem Phys        ISSN: 0021-9606            Impact factor:   3.488


  9 in total

Review 1.  Big-Data Science in Porous Materials: Materials Genomics and Machine Learning.

Authors:  Kevin Maik Jablonka; Daniele Ongari; Seyed Mohamad Moosavi; Berend Smit
Journal:  Chem Rev       Date:  2020-06-10       Impact factor: 60.622

Review 2.  Bottom-up Coarse-Graining: Principles and Perspectives.

Authors:  Jaehyeok Jin; Alexander J Pak; Aleksander E P Durumeric; Timothy D Loose; Gregory A Voth
Journal:  J Chem Theory Comput       Date:  2022-09-07       Impact factor: 6.578

3.  Detection of multi-reference character imbalances enables a transfer learning approach for virtual high throughput screening with coupled cluster accuracy at DFT cost.

Authors:  Chenru Duan; Daniel B K Chu; Aditya Nandy; Heather J Kulik
Journal:  Chem Sci       Date:  2022-04-05       Impact factor: 9.969

Review 4.  Deep Learning for Deep Chemistry: Optimizing the Prediction of Chemical Patterns.

Authors:  Tânia F G G Cova; Alberto A C C Pais
Journal:  Front Chem       Date:  2019-11-26       Impact factor: 5.221

Review 5.  How Machine Learning Will Revolutionize Electrochemical Sciences.

Authors:  Aashutosh Mistry; Alejandro A Franco; Samuel J Cooper; Scott A Roberts; Venkatasubramanian Viswanathan
Journal:  ACS Energy Lett       Date:  2021-03-23       Impact factor: 23.101

6.  Unsupervised topological learning approach of crystal nucleation.

Authors:  Sébastien Becker; Emilie Devijver; Rémi Molinier; Noël Jakse
Journal:  Sci Rep       Date:  2022-02-24       Impact factor: 4.379

7.  Combining Machine Learning and Computational Chemistry for Predictive Insights Into Chemical Systems.

Authors:  John A Keith; Valentin Vassilev-Galindo; Bingqing Cheng; Stefan Chmiela; Michael Gastegger; Klaus-Robert Müller; Alexandre Tkatchenko
Journal:  Chem Rev       Date:  2021-07-07       Impact factor: 60.622

Review 8.  "Dividing and Conquering" and "Caching" in Molecular Modeling.

Authors:  Xiaoyong Cao; Pu Tian
Journal:  Int J Mol Sci       Date:  2021-05-10       Impact factor: 5.923

9.  Machine-Learned Free Energy Surfaces for Capillary Condensation and Evaporation in Mesopores.

Authors:  Caroline Desgranges; Jerome Delhommelle
Journal:  Entropy (Basel)       Date:  2022-01-07       Impact factor: 2.524

  9 in total

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