Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session F20: Data Science I: Big Data & ML
8:00 AM–10:48 AM,
Tuesday, March 3, 2020
Room: 301
Sponsoring
Unit:
GDS
Chair: William Ratcliff, National Institute of Standards and Technology
Abstract: F20.00005 : Revealing the Spectrum of Unknown Layered Materials with Super-Human Predictive Abilities
Presenter:
Gowoon Cheon
(Applied Physics, Stanford University)
Authors:
Gowoon Cheon
(Applied Physics, Stanford University)
Ekin Dogus Cubuk
(Google Brain)
Evan Antoniuk
(Chemistry, Stanford University)
Joshua Goldberger
(Chemistry, The Ohio State University)
Evan J. Reed
(Materials Science and Engineering, Stanford University)
To achieve super-human performance, we employ semi-supervised learning techniques for the first time in materials discovery. Semi-supervised learning utilizes unlabeled data in addition to labeled data, which is powerful in cases where labels are expensive to obtain or are noisy. We find that semi-supervised learning provides benefits over supervised learning in identifying layered materials, and it may be applicable to a wide range of problems in materials science.
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