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A Quantum Algorithm for Solving Eigenproblem of the Laplacian Matrix of a Fully Connected Weighted Graph

Hailing Liu, Lin-Chun Wan, Chao-Hua Yu, Shijie Pan, S. Qin, F. Gao, Q. Wen·March 28, 2022·DOI: 10.1002/qute.202300031
Physics

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Abstract

Solving eigenproblem of the Laplacian matrix of a fully connected weighted graph has wide applications in data science, machine learning, and image processing, etc. However, this is very challenging because it involves expensive matrix operations. Here, an efficient quantum algorithm is proposed to solve it. Specifically, the optimal Hamiltonian simulation technique based on the block‐encoding framework is adopted to implement the quantum simulation of the Laplacian matrix. Then, the eigenvalues and eigenvectors of the Laplacian matrix are extracted by the quantum phase estimation algorithm. The core of this entire algorithm is to construct a block‐encoding of the Laplacian matrix. To achieve this, how to construct block‐encoding of operators containing the information of the weight matrix and the degree matrix, respectively are shown in detail, and the block‐encoding of the Laplacian matrix is further obtained. Compared with its classical counterpart, this algorithm has a polynomial speedup on the number of vertices and an exponential speedup on the dimension of each vertex. It is also shown that this algorithm can be extended to solve the eigenproblem of symmetric (non‐symmetric) normalized Laplacian matrix.

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