Optimization-Free Inverse Design of High-Dimensional Nanoparticle Electrocatalysts Using Multi-target Machine Learning
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Li, Sichao
Ting, Jonathan Y. C.
Barnard, Amanda
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Springer Verlag
Abstract
Inverse design that directly predicts multiple structural characteristics of nanomaterials based on a set of desirable properties is
essential for translating computational predictions into laboratory experiments, and eventually into products. This is challenging due to the highdimensionality of nanomaterials data which causes an imbalance in the
mapping problem, where too few properties are available to predict too
many features. In this paper we use multi-target machine learning to
directly map the structural features and property labels, without the
need for exhaustive data sets or external optimization, and explore the
impact of more aggressive feature selection to manage the mapping function. We find that systematically reducing the dimensionality of the feature set improves the accuracy and generalizability of inverse models
when interpretable importance profiles from the corresponding forward
predictions are used to prioritize inclusion. This allows for a balance
between accuracy and efficiency to be established on a case-by-case basis,
but raises new questions about the role of domain knowledge and pragmatic preferences in feature prioritization strategies.
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Restricted until
2099-12-31
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