2023
DOI: 10.1007/s42484-023-00125-0
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Data re-uploading with a single qudit

Abstract: Quantum two-level systems, i.e., qubits, form the basis for most quantum machine learning approaches that have been proposed throughout the years. However, higher dimensional quantum systems constitute a promising alternative and are increasingly explored in theory and practice. Here, we explore the capabilities of multi-level quantum systems, so-called qudits, for their use in a quantum machine learning context. We formulate classification and regression problems with the data re-uploading approach and demons… Show more

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Cited by 2 publications
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“…This is achieved by leveraging results from quantum Fourier analysis, which have been recently generalized to the qudit scenario [41]. Moreover, the generalization of data re-uploading to qudits has been discussed in [42], where the qudit dimension is fixed to the number of classes. The implementation of classification techniques on a superconducting qutrit carried out in [43] also proves to be of great interest for the context of the present work.…”
Section: Our Work In Contextmentioning
confidence: 99%
“…This is achieved by leveraging results from quantum Fourier analysis, which have been recently generalized to the qudit scenario [41]. Moreover, the generalization of data re-uploading to qudits has been discussed in [42], where the qudit dimension is fixed to the number of classes. The implementation of classification techniques on a superconducting qutrit carried out in [43] also proves to be of great interest for the context of the present work.…”
Section: Our Work In Contextmentioning
confidence: 99%