In this work, an analysis of the performance of different Variational Quantum Circuits is presented, investigating how it changes with respect to entanglement topology, adopted gates, and Quantum Machine Learning tasks to be performed. The objective of the analysis is to identify the optimal way to construct circuits for Quantum Neural Networks. In the presented experiments, two types of circuits are used: one with alternating layers of rotations and entanglement, and the other, similar to the first one, but with an additional final layer of rotations. As rotation layers, all combinations of one and two rotation sequences are considered. Four different entanglement topologies are compared: linear, circular, pairwise, and full. Different tasks are considered, namely the generation of probability distributions and images, and image classification. Achieved results are correlated with the expressibility and entanglement capability of the different circuits to understand how these features affect performance.

Impact of Single Rotations and Entanglement Topologies in Quantum Neural Networks / Mordacci, M.; Amoretti, M.. - 2:(2025), pp. 314-319. ( 6th IEEE International Conference on Quantum Computing and Engineering, QCE 2025 Albuquerque Convention Center, usa 2025) [10.1109/QCE65121.2025.10342].

Impact of Single Rotations and Entanglement Topologies in Quantum Neural Networks

Mordacci M.
;
Amoretti M.
2025-01-01

Abstract

In this work, an analysis of the performance of different Variational Quantum Circuits is presented, investigating how it changes with respect to entanglement topology, adopted gates, and Quantum Machine Learning tasks to be performed. The objective of the analysis is to identify the optimal way to construct circuits for Quantum Neural Networks. In the presented experiments, two types of circuits are used: one with alternating layers of rotations and entanglement, and the other, similar to the first one, but with an additional final layer of rotations. As rotation layers, all combinations of one and two rotation sequences are considered. Four different entanglement topologies are compared: linear, circular, pairwise, and full. Different tasks are considered, namely the generation of probability distributions and images, and image classification. Achieved results are correlated with the expressibility and entanglement capability of the different circuits to understand how these features affect performance.
2025
Impact of Single Rotations and Entanglement Topologies in Quantum Neural Networks / Mordacci, M.; Amoretti, M.. - 2:(2025), pp. 314-319. ( 6th IEEE International Conference on Quantum Computing and Engineering, QCE 2025 Albuquerque Convention Center, usa 2025) [10.1109/QCE65121.2025.10342].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11381/3048995
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