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Dataset Design for Building Models of Chemical Reactivity

Priyanka Raghavan, Brittany C. Haas, Madeline E. Ruos, Jules Schleinitz, Abigail G. Doyle, Sarah E. Reisman, Matthew S. Sigman, Connor W. Coley

2023ACS Central Science89 citationsDOIOpen Access PDF

Abstract

Models can codify our understanding of chemical reactivity and serve a useful purpose in the development of new synthetic processes via, for example, evaluating hypothetical reaction conditions or in silico substrate tolerance. Perhaps the most determining factor is the composition of the training data and whether it is sufficient to train a model that can make accurate predictions over the full domain of interest. Here, we discuss the design of reaction datasets in ways that are conducive to data-driven modeling, emphasizing the idea that training set diversity and model generalizability rely on the choice of molecular or reaction representation. We additionally discuss the experimental constraints associated with generating common types of chemistry datasets and how these considerations should influence dataset design and model building.

Topics & Concepts

Generalizability theoryComputer scienceRepresentation (politics)Set (abstract data type)Training setDomain (mathematical analysis)Reactivity (psychology)Applicability domainModel buildingIn silicoMachine learningBiochemical engineeringData miningArtificial intelligenceData scienceQuantitative structure–activity relationshipChemistryEngineeringMathematicsGeneLawMathematical analysisPhysicsQuantum mechanicsPathologyAlternative medicineBiochemistryMedicinePoliticsProgramming languagePolitical scienceStatisticsMachine Learning in Materials ScienceComputational Drug Discovery MethodsTopic Modeling
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