3-phases Confusion Learning
Filippo Caleca, Simone Tibaldi, Elisa Ercolessi

TL;DR
This paper extends the Learning by Confusion method to systems with three phases using a ternary neural network, demonstrating its effectiveness on quantum models like the Kitaev chain and Extended Hubbard model.
Contribution
It introduces a generalized confusion scheme with a ternary neural network for multi-phase systems, expanding the applicability of machine learning in quantum many-body physics.
Findings
Successfully applied to Kitaev chain models.
Effective in analyzing the Extended Hubbard model.
Results align with previous research.
Abstract
The use of Neural Networks in quantum many-body theory has seen a formidable rise in recent years. Among the many possible applications, one surely is to make use of their pattern recognition power when dealing with the study of equilibrium phase diagram. Within this context, Learning by Confusion has emerged as an interesting, unbiased scheme. The idea behind it briefly consists in iteratively label numerical results in a random way and then train and test a Neural Network; while for a generic random labeling the Network displays low accuracy, the latter shall display a peak when data are divided into a correct, yet unknown way. Here, we propose a generalization of this confusion scheme for systems with more than two phases, for which it was originally proposed. Our construction simply relies on the use of a slightly different Neural Network: from a binary classificator we move to a…
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Taxonomy
TopicsQuantum many-body systems · Quantum, superfluid, helium dynamics · Cold Atom Physics and Bose-Einstein Condensates
