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Quantum Machine Learning

The Gell-Mann feature map of qutrits and its applications in classification tasks

arXiv
Authors: T. Valtinos, A. Mandilara, D. Syvridis

Year

2023

Paper ID

53363

Status

Preprint

Abstract Read

~2 min

Abstract Words

102

Citations

N/A

Abstract

Recent advancements in quantum hardware have enabled the realization of high-dimensional quantum states. This work investigates the potential of qutrits in quantum machine learning, leveraging their larger state space for enhanced supervised learning tasks. To that end, the Gell-Mann feature map is introduced which encodes information within an 8-dimensional Hilbert space. The study focuses on classification problems, comparing Gell-Mann feature map with maps generated by established qubit and classical models. We test different circuit architectures and explore possibilities in optimization techniques. By shedding light on the capabilities and limitations of qutrit-based systems, this research aims to advance applications of low-depth quantum circuits.

Why This Paper Matters

  • This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
  • It adds a 2023 reference point for readers tracking recent quantum research.
  • Recent advancements in quantum hardware have enabled the realization of high-dimensional quantum states.

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Current Paper #53363 #69034 Hardware-aware Low-latency Quan... #69025 Machine-Learning Optimization a... #69003 QBugLM: An Agentic Benchmarking... #68993 Tomography of quantum states wi...

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