Maximum-Likelihood Detection with QAOA for Massive MIMO and Sherrington-Kirkpatrick Model with Local Field at Infinite Size

Citation Author(s):
Burhan
Gulbahar
Submitted by:
Burhan Gulbahar
Last updated:
Fri, 03/22/2024 - 11:11
DOI:
10.21227/x0g7-n411
License:
0
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Abstract 

The data repository contains detailed information about  theoretical model used in the simulations and data sets obtained with simulations for the article with the title "Maximum-Likelihood Detection with QAOA for Massive MIMO and Sherrington-Kirkpatrick Model  with Local Field at Infinite Size". For a comprehensive understanding, please refer to the main article.  We apply Quantum-approximate optimization algorithm (QAOA) on maximum-likelihood (ML) detection of massive multiple-input multiple output (MIMO) systems.  We provide extensive simulation studies for QAOA by analyzing statistical properties of QAOA measurements in IBM Quantum Lab. We share corresponding measurement statistics for the costs  and total number of bit errors for a total of 236500 individual QAOA circuits for varying system size n, QAOA circuit depth p and  signal-to-noise (SNR). Researchers can access the dataset and its associated documentation for further analysis and verification.

 

Instructions: 

readme.pdf file explains the contents of each file in the zip file All_DataSet_Files.zip and the main subject of the data set.

Funding Agency: 
TUBITAK (The Scientific and Technical Research Council of Turkey)
Grant Number: 
119E584
Data Descriptor Article DOI: 

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Submitted by Ahmed Alnuaimi on Thu, 09/21/2023 - 04:49