Litcius/Paper detail

Assessing the frontier: Active learning, model accuracy, and multi-objective candidate discovery and optimization

Zachary del Rosario, Matthias Rupp, Yoolhee Kim, Erin Antono, Julia Ling

2020The Journal of Chemical Physics60 citationsDOIOpen Access PDF

Abstract

Discovering novel chemicals and materials can be greatly accelerated by iterative machine learning-informed proposal of candidates-active learning. However, standard global error metrics for model quality are not predictive of discovery performance and can be misleading. We introduce the notion of Pareto shell error to help judge the suitability of a model for proposing candidates. Furthermore, through synthetic cases, an experimental thermoelectric dataset and a computational organic molecule dataset, we probe the relation between acquisition function fidelity and active learning performance. Results suggest novel diagnostic tools, as well as new insights for the acquisition function design.

Topics & Concepts

Computer scienceMachine learningFidelityArtificial intelligencePareto principleFunction (biology)Active learning (machine learning)Data miningMathematical optimizationMathematicsTelecommunicationsBiologyEvolutionary biologyMachine Learning in Materials ScienceComputational Drug Discovery MethodsProtein Structure and Dynamics