Data-driven causal inference of process-structure relationships in nanocatalysis
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Ting, Jonathan YC
Barnard, Amanda
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Volume Title
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Elsevier
Abstract
While the field of nanocatalysis has benefited from the
application of conventional machine learning methods by
leveraging the correlations between processing/structure/
property variables, the outcomes from purely correlational
studies lack actionability due to missing mechanistic insights.
Statistical learning, particularly causal inference, can
potentially provide access to more actionable insights by
allowing the discovery and verification of deeply obscured
causal relationships between variables, using strong
correlations identified from interpretable machine learning
models as starting points. Recent studies that exemplify the
collaborative usage of correlational and causal analysis in
catalysis are discussed, including studies potentially benefiting
from this approach. Some challenges remaining in the
application of inference techniques to the field are identified
and suggestions of future directions are provided.
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Current Opinion in Chemical Engineering
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Restricted until
2099-12-31
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