Quantum Codes from Neural Networks

06/22/2018
by   Johannes Bausch, et al.
0

We report on the usefulness of using neural networks as a variational state ansatz for many-body quantum systems in the context of quantum information-processing tasks. In the neural network state ansatz, the complex amplitude function of a quantum state is computed by a neural network. The resulting multipartite entanglement structure captured by this ansatz has proven rich enough to describe the ground states and unitary dynamics of various physical systems of interest. In the present paper, we supply further evidence for the usefulness of neural network states to describe multipartite entanglement. We demonstrate that neural network states are capable of efficiently representing quantum codes for quantum information transmission and quantum error correction. In particular, we show that a) neural network states yield quantum codes with a high coherent information for two important quantum channels, the depolarizing channel and the dephrasure channel; b) neural network states can be used to represent absolutely maximally entangled states, a special type of quantum error correction codes. In both cases, the neural network state ansatz provides an efficient and versatile means as variational parametrization of these states.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/11/2021

Mixed State Entanglement Classification using Artificial Neural Networks

Reliable methods for the classification and quantification of quantum en...
research
10/01/2019

Error Thresholds for Arbitrary Pauli Noise

The error threshold of a one-parameter family of quantum channels is def...
research
08/18/2023

Variational optimization of the amplitude of neural-network quantum many-body ground states

Neural-network quantum states (NQSs), variationally optimized by combini...
research
12/01/2021

Infinite Neural Network Quantum States

We study infinite limits of neural network quantum states (∞-NNQS), whic...
research
12/23/2018

Surveying structural complexity in quantum many-body systems

Quantum many-body systems exhibit a rich and diverse range of exotic beh...
research
04/06/2017

Associative content-addressable networks with exponentially many robust stable states

The brain must robustly store a large number of memories, corresponding ...
research
02/23/2018

Advantages of versatile neural-network decoding for topological codes

Finding optimal correction of errors in generic stabilizer codes is a co...

Please sign up or login with your details

Forgot password? Click here to reset