How Random Are Ergodic Eigenstates of the Ultrametric Random Matrices and the Quantum Sun Model?
- URL: http://arxiv.org/abs/2501.19244v1
- Date: Fri, 31 Jan 2025 15:59:18 GMT
- Title: How Random Are Ergodic Eigenstates of the Ultrametric Random Matrices and the Quantum Sun Model?
- Authors: Tanay Pathak,
- Abstract summary: We numerically study the extreme-value statistics of the Schmidt eigenvalues of reduced density matrices obtained from the ergodic eigenstates.
For both the ultrametric random matrix and the Quantum Sun model, it can be better described using the extreme value distribution.
- Score: 0.0
- License:
- Abstract: We numerically study the extreme-value statistics of the Schmidt eigenvalues of reduced density matrices obtained from the ergodic eigenstates. We start by exploring the extreme value statistics of the ultrametric random matrices and then the related Quantum Sun Model, which is also a toy model of avalanche theory. It is expected that these ergodic eigenstates are purely random and thus possess random matrix theory-like features, and the corresponding eigenvalue density should follow the universal Marchenko-Pastur law. Nonetheless, we find deviations, specifically near the tail in both cases. Similarly, the distribution of maximum eigenvalue, after appropriate centering and scaling, should follow the Tracy-Widom distribution. However, our results show that, for both the ultrametric random matrix and the Quantum Sun model, it can be better described using the extreme value distribution. As the extreme value distribution is associated with uncorrelated or weakly correlated random variables, the results hence indicate that the Schmidt eigenvalues exhibit much weaker correlations compared to the strong correlations typically observed in Wishart matrices. Similar deviations are observed for the case of minimum Schmidt eigenvalues as well . Despite the spectral statistics, such as nearest neighbor spacing ratios, aligning with the random matrix theory predictions, our findings reveal that randomness is still not fully achieved. This suggests that deviations in extreme-value statistics offer a stringent test to probe the randomness of ergodic eigenstates and can provide deeper insights into the underlying structure and correlations in ergodic systems.
Related papers
- Entrywise error bounds for low-rank approximations of kernel matrices [55.524284152242096]
We derive entrywise error bounds for low-rank approximations of kernel matrices obtained using the truncated eigen-decomposition.
A key technical innovation is a delocalisation result for the eigenvectors of the kernel matrix corresponding to small eigenvalues.
We validate our theory with an empirical study of a collection of synthetic and real-world datasets.
arXiv Detail & Related papers (2024-05-23T12:26:25Z) - On randomized estimators of the Hafnian of a nonnegative matrix [0.0]
Gaussian Boson samplers aim to demonstrate quantum advantage by performing a sampling task believed to be classically hard.
For nonnegative matrices, there is a family of randomized estimators of the Hafnian based on generating a particular random matrix and calculating its determinant.
Here we investigate the performance of two such estimators, which we call the Barvinok and Godsil-Gutman estimators.
arXiv Detail & Related papers (2023-12-15T19:00:07Z) - Statistical Efficiency of Score Matching: The View from Isoperimetry [96.65637602827942]
We show a tight connection between statistical efficiency of score matching and the isoperimetric properties of the distribution being estimated.
We formalize these results both in the sample regime and in the finite regime.
arXiv Detail & Related papers (2022-10-03T06:09:01Z) - When Random Tensors meet Random Matrices [50.568841545067144]
This paper studies asymmetric order-$d$ spiked tensor models with Gaussian noise.
We show that the analysis of the considered model boils down to the analysis of an equivalent spiked symmetric textitblock-wise random matrix.
arXiv Detail & Related papers (2021-12-23T04:05:01Z) - Test Set Sizing Via Random Matrix Theory [91.3755431537592]
This paper uses techniques from Random Matrix Theory to find the ideal training-testing data split for a simple linear regression.
It defines "ideal" as satisfying the integrity metric, i.e. the empirical model error is the actual measurement noise.
This paper is the first to solve for the training and test size for any model in a way that is truly optimal.
arXiv Detail & Related papers (2021-12-11T13:18:33Z) - Random matrices associated with general barrier billiards [0.0]
The paper is devoted to the derivation of random unitary matrices whose spectral statistics is the same as statistics of quantum eigenvalues of certain deterministic two-dimensional barrier billiards.
An important ingredient of the method is the calculation of $S$-matrix for the scattering in the slab with a half-plane inside by the Wiener-Hopf method.
arXiv Detail & Related papers (2021-10-30T07:26:40Z) - Near optimal sample complexity for matrix and tensor normal models via
geodesic convexity [5.191641077435773]
We show nonasymptotic bounds for the error achieved by the maximum likelihood estimator (MLE) in several natural metrics.
In the same regimes as our sample complexity bounds, we show that an iterative procedure to compute the MLE known as the flip-flop algorithm converges linearly with high probability.
arXiv Detail & Related papers (2021-10-14T17:47:00Z) - Spectral clustering under degree heterogeneity: a case for the random
walk Laplacian [83.79286663107845]
This paper shows that graph spectral embedding using the random walk Laplacian produces vector representations which are completely corrected for node degree.
In the special case of a degree-corrected block model, the embedding concentrates about K distinct points, representing communities.
arXiv Detail & Related papers (2021-05-03T16:36:27Z) - Understanding Implicit Regularization in Over-Parameterized Single Index
Model [55.41685740015095]
We design regularization-free algorithms for the high-dimensional single index model.
We provide theoretical guarantees for the induced implicit regularization phenomenon.
arXiv Detail & Related papers (2020-07-16T13:27:47Z) - Test of Eigenstate Thermalization Hypothesis Based on Local Random
Matrix Theory [4.014524824655106]
We numerically obtain a distribution of maximum fluctuations of eigenstate expectation values for different realizations of the interactions.
The ergodicity of our random matrix ensembles breaks down due to locality.
arXiv Detail & Related papers (2020-05-13T15:45:13Z) - Probing the randomness of ergodic states: extreme-value statistics in
the ergodic and many-body-localized phases [0.0]
We study the extreme-value statistics of the entanglement spectrum in disordered spin chains possessing a many-body localization transition.
In particular, the density of eigenvalues is supposed to follow the universal Marchenko-Pastur distribution.
We find heavy tailed distributions and L'evy stable laws in an appropriately scaled function of the largest and second largest eigenvalues.
arXiv Detail & Related papers (2020-02-03T12:45:53Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.