Audacity of huge: overcoming challenges of data scarcity and data
quality for machine learning in computational materials discovery
- URL: http://arxiv.org/abs/2111.01905v1
- Date: Tue, 2 Nov 2021 21:43:58 GMT
- Title: Audacity of huge: overcoming challenges of data scarcity and data
quality for machine learning in computational materials discovery
- Authors: Aditya Nandy, Chenru Duan, Heather J. Kulik
- Abstract summary: Machine learning (ML)-accelerated discovery requires large amounts of high-fidelity data to reveal predictive structure-property relationships.
For many properties of interest in materials discovery, the challenging nature and high cost of data generation has resulted in a data landscape that is scarcely populated and of dubious quality.
In the absence of manual curation, increasingly sophisticated natural language processing and automated image analysis are making it possible to learn structure-property relationships from the literature.
- Score: 1.0036312061637764
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Machine learning (ML)-accelerated discovery requires large amounts of
high-fidelity data to reveal predictive structure-property relationships. For
many properties of interest in materials discovery, the challenging nature and
high cost of data generation has resulted in a data landscape that is both
scarcely populated and of dubious quality. Data-driven techniques starting to
overcome these limitations include the use of consensus across functionals in
density functional theory, the development of new functionals or accelerated
electronic structure theories, and the detection of where computationally
demanding methods are most necessary. When properties cannot be reliably
simulated, large experimental data sets can be used to train ML models. In the
absence of manual curation, increasingly sophisticated natural language
processing and automated image analysis are making it possible to learn
structure-property relationships from the literature. Models trained on these
data sets will improve as they incorporate community feedback.
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