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arxiv: 1805.12138 · v2 · pith:7V7ARKUUnew · submitted 2018-05-30 · ❄️ cond-mat.dis-nn

Machine Learning Many-Body Localization: Search for the Elusive Nonergodic Metal

classification ❄️ cond-mat.dis-nn
keywords phasenonergodicexistencemetallicapproachlearningmachinemany-body
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The breaking of ergodicity in isolated quantum systems with a single-particle mobility edge is an intriguing subject that has not yet been fully understood. In particular, whether a nonergodic but metallic phase exists or not in the presence of a one-dimensional quasiperiodic potential is currently under active debate. In this Letter, we develop a neural-network-based approach to investigate the existence of this nonergodic metallic phase in a prototype model using many-body entanglement spectra as the sole diagnostic. We find that such a method identifies with high confidence the existence of a nonergodic metallic phase in the midspectrum at an intermediate quasiperiodic potential strength. Our neural-network based approach shows how supervised machine learning can be applied not only in locating phase boundaries but also in providing a way to definitively examine the existence or not of a novel phase.

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