A tensor network discriminator architecture for classification of
quantum data on quantum computers
- URL: http://arxiv.org/abs/2202.10911v1
- Date: Tue, 22 Feb 2022 14:19:42 GMT
- Title: A tensor network discriminator architecture for classification of
quantum data on quantum computers
- Authors: Michael L. Wall, Paraj Titum, Gregory Quiroz, Michael Foss-Feig, Kaden
R. A. Hazzard
- Abstract summary: We demonstrate the use of matrix product state (MPS) models for discriminating quantum data on quantum computers using holographic algorithms.
We experimentally evaluate models on Quantinuum's H1-2 trapped ion quantum computer using entangled input data modeled as translationally invariant, bond 4 MPSs.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We demonstrate the use of matrix product state (MPS) models for
discriminating quantum data on quantum computers using holographic algorithms,
focusing on classifying a translationally invariant quantum state based on $L$
qubits of quantum data extracted from it. We detail a process in which data
from single-shot experimental measurements are used to optimize an isometric
tensor network, the tensors are compiled into unitary quantum operations using
greedy compilation heuristics, parameter optimization on the resulting quantum
circuit model removes the post-selection requirements of the isometric tensor
model, and the resulting quantum model is inferenced on either product state or
entangled quantum data. We demonstrate our training and inference architecture
on a synthetic dataset of six-site single-shot measurements from the bulk of a
one-dimensional transverse field Ising model (TFIM) deep in its
antiferromagnetic and paramagnetic phases. We experimentally evaluate models on
Quantinuum's H1-2 trapped ion quantum computer using entangled input data
modeled as translationally invariant, bond dimension 4 MPSs across the known
quantum phase transition of the TFIM. Using linear regression on the
experimental data near the transition point, we find predictions for the
critical transverse field of $h=0.962$ and $0.994$ for tensor network
discriminators of bond dimension $\chi=2$ and $\chi=4$, respectively. These
predictions compare favorably with the known transition location of $h=1$
despite training on data far from the transition point. Our techniques identify
families of short-depth variational quantum circuits in a data-driven and
hardware-aware fashion and robust classical techniques to precondition the
model parameters, and can be adapted beyond machine learning to myriad
applications of tensor networks on quantum computers, such as quantum
simulation and error correction.
Related papers
- ShadowGPT: Learning to Solve Quantum Many-Body Problems from Randomized Measurements [2.1946359779523332]
We propose ShadowGPT, a novel approach for solving quantum many-body problems by learning from randomized measurement data collected from quantum experiments.
The model is a generative pretrained transformer (GPT) trained on simulated classical shadow data of ground states of quantum Hamiltonians.
arXiv Detail & Related papers (2024-11-05T17:34:03Z) - Fourier Neural Operators for Learning Dynamics in Quantum Spin Systems [77.88054335119074]
We use FNOs to model the evolution of random quantum spin systems.
We apply FNOs to a compact set of Hamiltonian observables instead of the entire $2n$ quantum wavefunction.
arXiv Detail & Related papers (2024-09-05T07:18:09Z) - Efficient Learning for Linear Properties of Bounded-Gate Quantum Circuits [63.733312560668274]
Given a quantum circuit containing d tunable RZ gates and G-d Clifford gates, can a learner perform purely classical inference to efficiently predict its linear properties?
We prove that the sample complexity scaling linearly in d is necessary and sufficient to achieve a small prediction error, while the corresponding computational complexity may scale exponentially in d.
We devise a kernel-based learning model capable of trading off prediction error and computational complexity, transitioning from exponential to scaling in many practical settings.
arXiv Detail & Related papers (2024-08-22T08:21:28Z) - Quantum tensor networks algorithms for evaluation of spectral functions
on quantum computers [0.0]
We investigate quantum algorithms derived from tensor networks to simulate the static and dynamic properties of quantum many-body systems.
We demonstrate algorithms to prepare ground and excited states on a quantum computer and apply them to molecular nanomagnets (MNMs) as a paradigmatic example.
arXiv Detail & Related papers (2023-09-26T18:01:42Z) - A performance characterization of quantum generative models [35.974070202997176]
We compare quantum circuits used for quantum generative modeling.
We learn the underlying probability distribution of the data sets via two popular training methods.
We empirically find that a variant of the discrete architecture, which learns the copula of the probability distribution, outperforms all other methods.
arXiv Detail & Related papers (2023-01-23T11:00:29Z) - A didactic approach to quantum machine learning with a single qubit [68.8204255655161]
We focus on the case of learning with a single qubit, using data re-uploading techniques.
We implement the different proposed formulations in toy and real-world datasets using the qiskit quantum computing SDK.
arXiv Detail & Related papers (2022-11-23T18:25:32Z) - Entanglement Forging with generative neural network models [0.0]
We show that a hybrid quantum-classical variational ans"atze can forge entanglement to lower quantum resource overhead.
The method is efficient in terms of the number of measurements required to achieve fixed precision on expected values of observables.
arXiv Detail & Related papers (2022-05-02T14:29:17Z) - Simulating the Mott transition on a noisy digital quantum computer via
Cartan-based fast-forwarding circuits [62.73367618671969]
Dynamical mean-field theory (DMFT) maps the local Green's function of the Hubbard model to that of the Anderson impurity model.
Quantum and hybrid quantum-classical algorithms have been proposed to efficiently solve impurity models.
This work presents the first computation of the Mott phase transition using noisy digital quantum hardware.
arXiv Detail & Related papers (2021-12-10T17:32:15Z) - Tree tensor network classifiers for machine learning: from
quantum-inspired to quantum-assisted [0.0]
We describe a quantum-assisted machine learning (QAML) method in which multivariate data is encoded into quantum states in a Hilbert space whose dimension is exponentially large in the length of the data vector.
We present an approach that can be implemented on gate-based quantum computing devices.
arXiv Detail & Related papers (2021-04-06T02:31:48Z) - State preparation and measurement in a quantum simulation of the O(3)
sigma model [65.01359242860215]
We show that fixed points of the non-linear O(3) sigma model can be reproduced near a quantum phase transition of a spin model with just two qubits per lattice site.
We apply Trotter methods to obtain results for the complexity of adiabatic ground state preparation in both the weak-coupling and quantum-critical regimes.
We present and analyze a quantum algorithm based on non-unitary randomized simulation methods.
arXiv Detail & Related papers (2020-06-28T23:44:12Z) - Quantum Statistical Complexity Measure as a Signalling of Correlation
Transitions [55.41644538483948]
We introduce a quantum version for the statistical complexity measure, in the context of quantum information theory, and use it as a signalling function of quantum order-disorder transitions.
We apply our measure to two exactly solvable Hamiltonian models, namely: the $1D$-Quantum Ising Model and the Heisenberg XXZ spin-$1/2$ chain.
We also compute this measure for one-qubit and two-qubit reduced states for the considered models, and analyse its behaviour across its quantum phase transitions for finite system sizes as well as in the thermodynamic limit by using Bethe ansatz.
arXiv Detail & Related papers (2020-02-05T00:45:21Z)
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.