4.8 Article

Using Gaussian Boson Sampling to Find Dense Subgraphs

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PHYSICAL REVIEW LETTERS
卷 121, 期 3, 页码 -

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AMER PHYSICAL SOC
DOI: 10.1103/PhysRevLett.121.030503

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solving problems of practical interest is less well understood. Here we show that Gaussian boson sampling (GBS) can be used for dense subgraph identification. Focusing on the NP-hard densest k-subgraph problem, we find that stochastic algorithms are enhanced through GBS, which selects dense subgraphs with high probability. These findings rely on a link between graph density and the number of perfect matchings-enumerated by the Hafnian-which is the relevant quantity determining sampling probabilities in GBS. We test our findings by constructing GBS-enhanced versions of the random search and simulated annealing algorithms and apply them through numerical simulations of GBS to identify the densest subgraph of a 30 vertex graph.

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