Emergent fractal phase in energy stratified random models
- URL: http://arxiv.org/abs/2106.03864v2
- Date: Sun, 24 Oct 2021 14:26:42 GMT
- Title: Emergent fractal phase in energy stratified random models
- Authors: A. G. Kutlin and I. M. Khaymovich
- Abstract summary: We study the effects of partial correlations in kinetic hopping terms of long-range random matrix models on their localization properties.
We show that any deviation from the completely correlated case leads to the emergent non-ergodic delocalization in the system.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We study the effects of partial correlations in kinetic hopping terms of
long-range disordered random matrix models on their localization properties. We
consider a set of models interpolating between fully-localized Richardson's
model and the celebrated Rosenzweig-Porter model (with implemented
translation-invariant symmetry). In order to do this, we propose the
energy-stratified spectral structure of the hopping term allowing one to
decrease the range of correlations gradually. We show both analytically and
numerically that any deviation from the completely correlated case leads to the
emergent non-ergodic delocalization in the system unlike the predictions of
localization of cooperative shielding. In order to describe the models with
correlated kinetic terms, we develop the generalization of the Dyson Brownian
motion and cavity approaches basing on stochastic matrix process with
independent rank-one matrix increments and examine its applicability to the
above set of models.
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