Unsupervised machine learning of quantum phase transitions using
diffusion maps
- URL: http://arxiv.org/abs/2003.07399v2
- Date: Fri, 4 Dec 2020 22:58:50 GMT
- Title: Unsupervised machine learning of quantum phase transitions using
diffusion maps
- Authors: Alexander Lidiak and Zhexuan Gong
- Abstract summary: We show that the diffusion map method, which performs nonlinear dimensionality reduction and spectral clustering of the measurement data, has significant potential for learning complex phase transitions unsupervised.
This method works for measurements of local observables in a single basis and is thus readily applicable to many experimental quantum simulators.
- Score: 77.34726150561087
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Experimental quantum simulators have become large and complex enough that
discovering new physics from the huge amount of measurement data can be quite
challenging, especially when little theoretical understanding of the simulated
model is available. Unsupervised machine learning methods are particularly
promising in overcoming this challenge. For the specific task of learning
quantum phase transitions, unsupervised machine learning methods have primarily
been developed for phase transitions characterized by simple order parameters,
typically linear in the measured observables. However, such methods often fail
for more complicated phase transitions, such as those involving incommensurate
phases, valence-bond solids, topological order, and many-body localization. We
show that the diffusion map method, which performs nonlinear dimensionality
reduction and spectral clustering of the measurement data, has significant
potential for learning such complex phase transitions unsupervised. This method
works for measurements of local observables in a single basis and is thus
readily applicable to many experimental quantum simulators as a versatile tool
for learning various quantum phases and phase transitions.
Related papers
- Observation of disorder-free localization and efficient disorder averaging on a quantum processor [117.33878347943316]
We implement an efficient procedure on a quantum processor, leveraging quantum parallelism, to efficiently sample over all disorder realizations.
We observe localization without disorder in quantum many-body dynamics in one and two dimensions.
arXiv Detail & Related papers (2024-10-09T05:28:14Z) - Experimental demonstration of scalable cross-entropy benchmarking to
detect measurement-induced phase transitions on a superconducting quantum
processor [0.0]
We propose a protocol to detect entanglement phase transitions using linear cross-entropy.
We demonstrate this protocol in systems with one-dimensional and all-to-all connectivities on IBM's quantum hardware on up to 22 qubits.
Our demonstration paves the way for studies of measurement-induced entanglement phase transitions and associated critical phenomena on larger near-term quantum systems.
arXiv Detail & Related papers (2024-03-01T19:35:54Z) - Measurement-induced entanglement and teleportation on a noisy quantum
processor [105.44548669906976]
We investigate measurement-induced quantum information phases on up to 70 superconducting qubits.
We use a duality mapping, to avoid mid-circuit measurement and access different manifestations of the underlying phases.
Our work demonstrates an approach to realize measurement-induced physics at scales that are at the limits of current NISQ processors.
arXiv Detail & Related papers (2023-03-08T18:41:53Z) - Tracking quantum coherence in polariton condensates with time-resolved
tomography [0.22766070234899094]
We harness non-Gaussian convolutions of highly singular Glauber-Sudarshan quasiprobabilities to dynamically monitor quantum coherence in polariton condensates.
We probe the systems's resourcefulness for quantum information processing up to the nanosecond regime.
In contrast to commonly applied phase-space functions, our distributions can be directly sampled from measured data.
arXiv Detail & Related papers (2022-09-15T08:22:58Z) - Neural-Network Decoders for Measurement Induced Phase Transitions [0.0]
Measurement-induced entanglement phase transitions in monitored quantum systems are a striking example.
We propose a neural network decoder to determine the state of the reference qubits conditioned on the measurement outcomes.
We show that the entanglement phase transition manifests itself as a stark change in the learnability of the decoder function.
arXiv Detail & Related papers (2022-04-22T19:40:26Z) - Learning quantum phases via single-qubit disentanglement [4.266508670102269]
We present a novel and efficient quantum phase transition, utilizing disentanglement with reinforcement learning-optimized variational quantum circuits.
Our approach not only identifies phase transitions based on the performance of the disentangling circuits but also exhibits impressive scalability, facilitating its application in larger and more complex quantum systems.
arXiv Detail & Related papers (2021-07-08T00:15:31Z) - Quantum-tailored machine-learning characterization of a superconducting
qubit [50.591267188664666]
We develop an approach to characterize the dynamics of a quantum device and learn device parameters.
This approach outperforms physics-agnostic recurrent neural networks trained on numerically generated and experimental data.
This demonstration shows how leveraging domain knowledge improves the accuracy and efficiency of this characterization task.
arXiv Detail & Related papers (2021-06-24T15:58:57Z) - Generalized quantum measurements with matrix product states:
Entanglement phase transition and clusterization [58.720142291102135]
We propose a method for studying the time evolution of many-body quantum lattice systems under continuous and site-resolved measurement.
We observe a peculiar phenomenon of measurement-induced particle clusterization that takes place only for frequent moderately strong measurements, but not for strong infrequent measurements.
arXiv Detail & Related papers (2021-04-21T10:36:57Z) - Unsupervised machine learning of topological phase transitions from
experimental data [52.77024349608834]
We apply unsupervised machine learning techniques to experimental data from ultracold atoms.
We obtain the topological phase diagram of the Haldane model in a completely unbiased fashion.
Our work provides a benchmark for unsupervised detection of new exotic phases in complex many-body systems.
arXiv Detail & Related papers (2021-01-14T16:38:21Z) - Topological quantum phase transitions retrieved through unsupervised
machine learning [2.778293655629716]
We show that the unsupervised manifold learning can successfully retrieve topological quantum phase transitions in momentum and real space.
We demonstrate this method on the prototypical Su-Schefferri-Heeger (SSH) model, the Qi-Wu-Zhang (QWZ) model, and the quenched SSH model in momentum space.
arXiv Detail & Related papers (2020-02-06T17:11:11Z)
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.