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Quantum spectral clustering algorithm for unsupervised learning

Quantum Physics 2023-01-03 v2

Abstract

Clustering is one of the most crucial problems in unsupervised learning, and the well-known kk-means clustering algorithm has been shown to be implementable on a quantum computer with a significant speedup. However, many clustering problems cannot be solved by kk-means, and a powerful method called spectral clustering is introduced to solve these problems. In this work, we propose a circuit design to implement spectral clustering on a quantum processor with a substantial speedup, by initializing the processor into a maximally entangled state and encoding the data information into an efficiently-simulatable Hamiltonian. Compared with the established quantum kk-means algorithms, our method does not require a quantum random access memory or a quantum adiabatic process. It relies on an appropriate embedding of quantum phase estimation into Grover's search to gain the quantum speedup. Simulations demonstrate that our method is effective in solving clustering problems and will serve as an important supplement to quantum kk-means for unsupervised learning.

Keywords

Cite

@article{arxiv.2203.03132,
  title  = {Quantum spectral clustering algorithm for unsupervised learning},
  author = {Qingyu Li and Yuhan Huang and Shan Jin and Xiaokai Hou and Xiaoting Wang},
  journal= {arXiv preprint arXiv:2203.03132},
  year   = {2023}
}

Comments

7 pages, 12 figures