Bulletin of the American Physical Society
APS March Meeting 2018
Volume 63, Number 1
Monday–Friday, March 5–9, 2018; Los Angeles, California
Session F34: Machine Learning in Condensed Matter Physics II
11:15 AM–2:15 PM,
Tuesday, March 6, 2018
LACC
Room: 409A
Sponsoring
Units:
DCOMP DCMP
Chair: Roger Melko, Univ of Waterloo
Abstract ID: BAPS.2018.MAR.F34.8
Abstract: F34.00008 : The dangers of inadvertently poisoned training sets in physics applications
1:03 PM–1:15 PM
Presenter:
Chao Fang
(Physics, Texas A&M Univ)
Authors:
Chao Fang
(Physics, Texas A&M Univ)
Helmut Katzgraber
(Physics, Texas A&M Univ)
poisoned training attacks are of malicious nature, inadvertent poisoning due to, e.g., poor quality of the input data can strongly influence the predictive outcome of machine learning approaches. Here, we illustrate the potential pitfalls of using machine learning techniques with a poisoned training set using spin-glass problems and highlight the dangers of using machine learning techniques for condensed matter physics applications.
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2018.MAR.F34.8
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