On compression rate of quantum autoencoders: Control design, numerical and experimental realization

05/22/2020
by   Hailan Ma, et al.
0

Quantum autoencoders which aim at compressing quantum information in a low-dimensional latent space lie in the heart of automatic data compression in the field of quantum information. In this paper, we establish an upper bound of the compression rate for a given quantum autoencoder and present a learning control approach for training the autoencoder to achieve the maximal compression rate. The upper bound of the compression rate is theoretically proven using eigen-decomposition and matrix differentiation, which is determined by the eigenvalues of the density matrix representation of the input states. Numerical results on 2-qubit and 3-qubit systems are presented to demonstrate how to train the quantum autoencoder to achieve the theoretically maximal compression, and the training performance using different machine learning algorithms is compared. Experimental results of a quantum autoencoder using quantum optical systems are illustrated for compressing two 2-qubit states into two 1-qubit states.

READ FULL TEXT
research
09/21/2017

Quantum Autoencoders via Quantum Adders with Genetic Algorithms

The quantum autoencoder is a recent paradigm in the field of quantum mac...
research
11/24/2018

Implementing Entangled States on a Quantum Computer

The study of tensor network theory is an important field and promises a ...
research
07/27/2018

Experimental Implementation of a Quantum Autoencoder via Quantum Adders

Quantum autoencoders allow for reducing the amount of resources in a qua...
research
07/06/2022

Quantum compression with classically simulatable circuits

As we continue to find applications where the currently available noisy ...
research
03/11/2023

A Quantum Outlier Theorem

In recent results, it has been proven that all sampling methods produce ...
research
04/15/2019

Exact Rate-Distortion in Autoencoders via Echo Noise

Compression is at the heart of effective representation learning. Howeve...
research
03/03/2020

Robust data encodings for quantum classifiers

Data representation is crucial for the success of machine learning model...

Please sign up or login with your details

Forgot password? Click here to reset