Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session M39: Machine Learning for Quantum Matter II
11:15 AM–2:03 PM,
Wednesday, March 4, 2020
Room: 703
Sponsoring
Units:
DCOMP GDS DMP
Chair: Estelle Inack, Perimeter Inst for Theo Phys
Abstract: M39.00002 : Working without data: overcoming gaps in deep learning and physics-based extrapolation
View Presentation Abstract
Presenter:
Isaac Tamblyn
(National Research Council of Canada)
Author:
Isaac Tamblyn
(National Research Council of Canada)
These problems include the ability to extrapolate to unseen experimental conditions, transfer knowledge across length-scales, and the challenge of interpreting results within a physically motivated framework. Other challenges include the lack of a standardized methodology for reporting and understanding model errors as well as the frequent requirement for large quantities of data.
I will outline some of our ongoing efforts to address some of these challenges, with special attention paid to the concept of extrapolation (including the physical conditions of study and across length scales). To explore these ideas, we explore model spin-systems, 2d materials, and optical lattices.
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