Learning Informative Latent Representation for Quantum State Tomography
- URL: http://arxiv.org/abs/2310.00518v1
- Date: Sat, 30 Sep 2023 22:37:28 GMT
- Title: Learning Informative Latent Representation for Quantum State Tomography
- Authors: Hailan Ma, Zhenhong Sun, Daoyi Dong, Dong Gong
- Abstract summary: Quantum state tomography (QST) is the process of reconstructing the complete state of a quantum system.
Recent advances in deep neural networks (DNNs) led to the emergence of deep learning (DL) in QST.
We propose a transformer-based autoencoder architecture tailored for QST with imperfect measurement data.
- Score: 18.19768367431327
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum state tomography (QST) is the process of reconstructing the complete
state of a quantum system (mathematically described as a density matrix)
through a series of different measurements. These measurements are performed on
a number of identical copies of the quantum system, with outcomes gathered as
frequencies. QST aims to recover the density matrix and the corresponding
properties of the quantum state from the measured frequencies. Although an
informationally complete set of measurements can specify quantum state
accurately in an ideal scenario with a large number of identical copies, both
measurements and identical copies are restricted and imperfect in practical
scenarios, making QST highly ill-posed. The conventional QST methods usually
assume adequate or accurate measured frequencies or rely on manually designed
regularizers to handle the ill-posed reconstruction problem, suffering from
limited applications in realistic scenarios. Recent advances in deep neural
networks (DNNs) led to the emergence of deep learning (DL) in QST. However,
existing DL-based QST approaches often employ generic DNN models that are not
optimized for imperfect conditions of QST. In this paper, we propose a
transformer-based autoencoder architecture tailored for QST with imperfect
measurement data. Our method leverages a transformer-based encoder to extract
an informative latent representation (ILR) from imperfect measurement data and
employs a decoder to predict the quantum states based on the ILR. We anticipate
that the high-dimensional ILR will capture more comprehensive information about
quantum states. To achieve this, we conduct pre-training of the encoder using a
pretext task that involves reconstructing high-quality frequencies from
measured frequencies. Extensive simulations and experiments demonstrate the
remarkable ability of the ILR in dealing with imperfect measurement data in
QST.
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