Performance Analysis of Multi-Angle QAOA for p > 1
ORAL
Abstract
In this paper we consider the scalability of Multi-Angle QAOA with respect to the number of QAOA layers. We found that MA-QAOA is able to significantly reduce the depth of QAOA circuits, by a factor of up to 4 for the considered data sets. Moreover, MA-QAOA is less sensitive to system size, therefore we predict that this factor will be even larger for big graphs. However, MA-QAOA was found to be not optimal for minimization of the total QPU time. Different optimization initialization strategies are considered and compared for both QAOA and MA-QAOA. Among them, a new initialization strategy is suggested for MA-QAOA that is able to consistently and significantly outperform random initialization used in the previous studies.
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Publication: https://www.nature.com/articles/s41598-024-69643-6
Presenters
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Igor Gaidai
The University of Tennessee Knoxville
Authors
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Igor Gaidai
The University of Tennessee Knoxville
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Rebekah Herrman
University of Tennessee