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Deep learning: A guide for practitioners in the physical sciences

Authors :
Steve Langer
Ryan Nora
Jayaraman J. Thiagarajan
Kelli Humbird
Katie Lewis
Brian Van Essen
Brian Spears
Jim Gaffney
Michael Kruse
Barry Chen
J. L. Peterson
Peer-Timo Bremer
James M. Brase
J. E. Field
Source :
Physics of Plasmas. 25:080901
Publication Year :
2018
Publisher :
AIP Publishing, 2018.

Abstract

Machine learning is finding increasingly broad applications in the physical sciences. This most often involves building a model relationship between a dependent, measurable output, and an associated set of controllable, but complicated, independent inputs. We present a tutorial on current techniques in machine learning—a jumping-off point for interested researchers to advance their work. We focus on deep neural networks with an emphasis on demystifying deep learning. We begin with background ideas in machine learning and some example applications from current research in plasma physics. We discuss supervised learning techniques for modeling complicated functions, beginning with familiar regression schemes, and then advancing to more sophisticated deep learning methods. We also address unsupervised learning and techniques for reducing the dimensionality of input spaces. Along the way, we describe methods for practitioners to help ensure that their models generalize from their training data to as-yet-unseen test data. We describe classes of tasks—predicting scalars, handling images, and fitting time-series—and prepare the reader to choose an appropriate technique. We finally point out some limitations to modern machine learning and speculate on some ways that practitioners from the physical sciences may be particularly suited to help.

Details

ISSN :
10897674 and 1070664X
Volume :
25
Database :
OpenAIRE
Journal :
Physics of Plasmas
Accession number :
edsair.doi...........e655805fdf5c06580b4cf7e39d266af8
Full Text :
https://doi.org/10.1063/1.5020791