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Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments

[Image: see text] Traditionally, chemists have relied on years of training and accumulated experience in order to discover new molecules. But the space of possible molecules is so vast that only a limited exploration with the traditional methods can be ever possible. This means that many opportuniti...

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Autores principales: Duros, Vasilios, Grizou, Jonathan, Sharma, Abhishek, Mehr, S. Hessam M., Bubliauskas, Andrius, Frei, Przemysław, Miras, Haralampos N., Cronin, Leroy
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2019
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6593393/
https://www.ncbi.nlm.nih.gov/pubmed/31025861
http://dx.doi.org/10.1021/acs.jcim.9b00304
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author Duros, Vasilios
Grizou, Jonathan
Sharma, Abhishek
Mehr, S. Hessam M.
Bubliauskas, Andrius
Frei, Przemysław
Miras, Haralampos N.
Cronin, Leroy
author_facet Duros, Vasilios
Grizou, Jonathan
Sharma, Abhishek
Mehr, S. Hessam M.
Bubliauskas, Andrius
Frei, Przemysław
Miras, Haralampos N.
Cronin, Leroy
author_sort Duros, Vasilios
collection PubMed
description [Image: see text] Traditionally, chemists have relied on years of training and accumulated experience in order to discover new molecules. But the space of possible molecules is so vast that only a limited exploration with the traditional methods can be ever possible. This means that many opportunities for the discovery of interesting phenomena have been missed, and in addition, the inherent variability of these phenomena can make them difficult to control and understand. The current state-of-the-art is moving toward the development of automated and eventually fully autonomous systems coupled with in-line analytics and decision-making algorithms. Yet even these, despite the substantial progress achieved recently, still cannot easily tackle large combinatorial spaces, as they are limited by the lack of high-quality data. Herein, we explore the utility of active learning methods for exploring the chemical space by comparing the collaboration between human experimenters with an algorithm-based search against their performance individually to probe the self-assembly and crystallization of the polyoxometalate cluster Na(6)[Mo(120)Ce(6)O(366)H(12)(H(2)O)(78)]·200H(2)O (1). We show that the robot-human teams are able to increase the prediction accuracy to 75.6 ± 1.8%, from 71.8 ± 0.3% with the algorithm alone and 66.3 ± 1.8% from only the human experimenters demonstrating that human-robot teams can beat robots or humans working alone.
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spelling pubmed-65933932019-10-30 Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments Duros, Vasilios Grizou, Jonathan Sharma, Abhishek Mehr, S. Hessam M. Bubliauskas, Andrius Frei, Przemysław Miras, Haralampos N. Cronin, Leroy J Chem Inf Model [Image: see text] Traditionally, chemists have relied on years of training and accumulated experience in order to discover new molecules. But the space of possible molecules is so vast that only a limited exploration with the traditional methods can be ever possible. This means that many opportunities for the discovery of interesting phenomena have been missed, and in addition, the inherent variability of these phenomena can make them difficult to control and understand. The current state-of-the-art is moving toward the development of automated and eventually fully autonomous systems coupled with in-line analytics and decision-making algorithms. Yet even these, despite the substantial progress achieved recently, still cannot easily tackle large combinatorial spaces, as they are limited by the lack of high-quality data. Herein, we explore the utility of active learning methods for exploring the chemical space by comparing the collaboration between human experimenters with an algorithm-based search against their performance individually to probe the self-assembly and crystallization of the polyoxometalate cluster Na(6)[Mo(120)Ce(6)O(366)H(12)(H(2)O)(78)]·200H(2)O (1). We show that the robot-human teams are able to increase the prediction accuracy to 75.6 ± 1.8%, from 71.8 ± 0.3% with the algorithm alone and 66.3 ± 1.8% from only the human experimenters demonstrating that human-robot teams can beat robots or humans working alone. American Chemical Society 2019-04-26 2019-06-24 /pmc/articles/PMC6593393/ /pubmed/31025861 http://dx.doi.org/10.1021/acs.jcim.9b00304 Text en Copyright © 2019 American Chemical Society This is an open access article published under a Creative Commons Attribution (CC-BY) License (http://pubs.acs.org/page/policy/authorchoice_ccby_termsofuse.html) , which permits unrestricted use, distribution and reproduction in any medium, provided the author and source are cited.
spellingShingle Duros, Vasilios
Grizou, Jonathan
Sharma, Abhishek
Mehr, S. Hessam M.
Bubliauskas, Andrius
Frei, Przemysław
Miras, Haralampos N.
Cronin, Leroy
Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments
title Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments
title_full Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments
title_fullStr Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments
title_full_unstemmed Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments
title_short Intuition-Enabled Machine Learning Beats the Competition When Joint Human-Robot Teams Perform Inorganic Chemical Experiments
title_sort intuition-enabled machine learning beats the competition when joint human-robot teams perform inorganic chemical experiments
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6593393/
https://www.ncbi.nlm.nih.gov/pubmed/31025861
http://dx.doi.org/10.1021/acs.jcim.9b00304
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