Machine learning has gained widespread attention as a powerful tool to identify structure in complex, high-dimensional data. However, these techniques are ostensibly inapplicable for experimental systems where data are scarce or expensive to obtain. Here, we introduce a strategy to resolve this impasse by augmenting the experimental dataset with synthetically generated data of a much simpler sister system. Specifically, we study spontaneously emerging local order in crease networks of crumpled thin sheets, a paradigmatic example of spatial complexity, and show that machine learning techniques can be effective even in a data-limited regime. This is achieved by augmenting the scarce experimental dataset with inexhaustible amounts of simulated data of rigid flat-folded sheets, which are simple to simulate and share common statistical properties. This considerably improves the predictive power in a test problem of pattern completion and demonstrates the usefulness of machine learning in bench-top experiments where data are good but scarce.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6486215PMC
http://dx.doi.org/10.1126/sciadv.aau6792DOI Listing

Publication Analysis

Top Keywords

machine learning
16
data-limited regime
8
experimental dataset
8
data
6
machine
4
learning data-limited
4
regime augmenting
4
augmenting experiments
4
experiments synthetic
4
synthetic data
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!