A community-powered search of machine learning strategy space to find NMR property prediction models

Author:

Bratholm Lars A.ORCID,Gerrard Will,Anderson Brandon,Bai Shaojie,Choi Sunghwan,Dang Lam,Hanchar Pavel,Howard Addison,Kim Sanghoon,Kolter Zico,Kondor Risi,Kornbluth MordechaiORCID,Lee Youhan,Lee Youngsoo,Mailoa Jonathan P.,Nguyen Thanh Tu,Popovic Milos,Rakocevic GoranORCID,Reade Walter,Song Wonho,Stojanovic Luka,Thiede Erik H.,Tijanic Nebojsa,Torrubia Andres,Willmott Devin,Butts Craig P.,Glowacki David R.ORCID

Abstract

The rise of machine learning (ML) has created an explosion in the potential strategies for using data to make scientific predictions. For physical scientists wishing to apply ML strategies to a particular domain, it can be difficult to assess in advance what strategy to adopt within a vast space of possibilities. Here we outline the results of an online community-powered effort to swarm search the space of ML strategies and develop algorithms for predicting atomic-pairwise nuclear magnetic resonance (NMR) properties in molecules. Using an open-source dataset, we worked with Kaggle to design and host a 3-month competition which received 47,800 ML model predictions from 2,700 teams in 84 countries. Within 3 weeks, the Kaggle community produced models with comparable accuracy to our best previously published ‘in-house’ efforts. A meta-ensemble model constructed as a linear combination of the top predictions has a prediction accuracy which exceeds that of any individual model, 7-19x better than our previous state-of-the-art. The results highlight the potential of transformer architectures for predicting quantum mechanical (QM) molecular properties.

Funder

Engineering and Physical Sciences Research Council

Leverhulme Trust

Royal Society

National Research Foundation of Korea

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

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