TL;DR
This paper introduces an adversarial neural network approach to identify quantum phase transitions directly from ground state data, effectively mapping phase diagrams even in complex many-body systems without manual feature engineering.
Contribution
It presents a novel deep learning method using adversarial domain adaptation to discover phase boundaries from both known and unknown quantum systems, enabling unsupervised phase transition detection.
Findings
Successfully applied to Ising, Bose-Hubbard, and SSH models
Accurately predicts phase transition points
Works with high-dimensional parameter spaces
Abstract
The identification of phases of matter is a challenging task, especially in quantum mechanics, where the complexity of the ground state appears to grow exponentially with the size of the system. We address this problem with state-of-the-art deep learning techniques: adversarial domain adaptation. We derive the phase diagram of the whole parameter space starting from a fixed and known subspace using unsupervised learning. The input data set contains both labeled and unlabeled data instances. The first kind is a system that admits an accurate analytical or numerical solution, and one can recover its phase diagram. The second type is the physical system with an unknown phase diagram. Adversarial domain adaptation uses both types of data to create invariant feature extracting layers in a deep learning architecture. Once these layers are trained, we can attach an unsupervised learner to the…
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