Machine learning in physics: the pitfalls of poisoned training sets

Fang, Chao and Barzeger, Amin and Katzgraber, Helmut G (2020) Machine learning in physics: the pitfalls of poisoned training sets. Machine Learning: Science and Technology, 1 (4). 045001. ISSN 2632-2153

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Abstract

Known for their ability to identify hidden patterns in data, artificial neural networks are among the most powerful machine learning tools. Most notably, neural networks have played a central role in identifying states of matter and phase transitions across condensed matter physics. To date, most studies have focused on systems where different phases of matter and their phase transitions are known, and thus the performance of neural networks is well controlled. While neural networks present an exciting new tool to detect new phases of matter, here we demonstrate that when the training sets are poisoned (i.e. poor training data or mislabeled data) it is easy for neural networks to make misleading predictions.

Item Type: Article
Subjects: Scholar Eprints > Multidisciplinary
Depositing User: Managing Editor
Date Deposited: 03 Jul 2023 04:22
Last Modified: 26 Jul 2024 07:23
URI: http://repository.stmscientificarchives.com/id/eprint/2212

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