Calculation of topological invariants for crystalline systems is well understood in reciprocal space, allowing for the topological classification of a wide spectrum of materials. In this work, we present a technique based on the entanglement spectrum, which can be used to identify the hidden topology of systems without translational invariance. By training a neural network to distinguish between trivial and topological phases using the entanglement spectrum obtained from crystalline or weakly disordered phases, we can predict the topological phase diagram for generic disordered systems. This approach becomes particularly useful for gapless systems, while providing a computational speed-up compared to the commonly used Wilson loop technique ...
We investigate the effect of disorder on topologically nontrivial states in a two dimension (2D) mec...
We propose the use of artificial neural networks to design and characterize photonic topological ins...
The understanding of the effects of disorder in condensed matter systems has been of great importan...
Calculation of topological invariants for crystalline systems is well understood in reciprocal space...
The one-dimensional p-wave superconductor proposed by Kitaev has long been a classic example for und...
Topological invariants allow one to characterize Hamiltonians, predicting the existence of topologic...
In this Letter we supervisedly train neural networks to distinguish different topological phases in ...
In the past years Machine Learning has shown to be a useful tool in quantum many-body physics to det...
In this work we design and train deep neural networks to predict topological invariants for one-dime...
The combination of quantum effects and interactions in quantum many-body systems can result in exoti...
We study the entanglement spectrum of a translationally invariant lattice system under a random part...
In this dissertation, we use numerical methods to study one dimensional symmetry protected topologic...
Topological phases are unique states of matter incorporating long-range quan-tum entanglement, hosti...
Topological phenomena in physical systems are determined by topological structures and are thus univ...
We explore the capacity of neural networks to detect a symmetry with complex local and non-local pat...
We investigate the effect of disorder on topologically nontrivial states in a two dimension (2D) mec...
We propose the use of artificial neural networks to design and characterize photonic topological ins...
The understanding of the effects of disorder in condensed matter systems has been of great importan...
Calculation of topological invariants for crystalline systems is well understood in reciprocal space...
The one-dimensional p-wave superconductor proposed by Kitaev has long been a classic example for und...
Topological invariants allow one to characterize Hamiltonians, predicting the existence of topologic...
In this Letter we supervisedly train neural networks to distinguish different topological phases in ...
In the past years Machine Learning has shown to be a useful tool in quantum many-body physics to det...
In this work we design and train deep neural networks to predict topological invariants for one-dime...
The combination of quantum effects and interactions in quantum many-body systems can result in exoti...
We study the entanglement spectrum of a translationally invariant lattice system under a random part...
In this dissertation, we use numerical methods to study one dimensional symmetry protected topologic...
Topological phases are unique states of matter incorporating long-range quan-tum entanglement, hosti...
Topological phenomena in physical systems are determined by topological structures and are thus univ...
We explore the capacity of neural networks to detect a symmetry with complex local and non-local pat...
We investigate the effect of disorder on topologically nontrivial states in a two dimension (2D) mec...
We propose the use of artificial neural networks to design and characterize photonic topological ins...
The understanding of the effects of disorder in condensed matter systems has been of great importan...