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A quantum hardware-induced graph kernel based on Gaussian Boson Sampling

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arxiv 1905.12646 v2 pith:4EJQATLW submitted 2019-05-29 quant-ph

A quantum hardware-induced graph kernel based on Gaussian Boson Sampling

classification quant-ph
keywords graphquantumbosongaussiankerneldevicefeaturekernels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A device called a 'Gaussian Boson Sampler' has initially been proposed as a near-term demonstration of classically intractable quantum computation. As recently shown, it can also be used to decide whether two graphs are isomorphic. Based on these results we construct a feature map and graph similarity measure or 'graph kernel' using samples from the device. We show that the kernel performs well compared to standard graph kernels on typical benchmark datasets, and provide a theoretical motivation for this success, linking the distribution of a Gaussian Boson Sampler to the number of matchings in subgraphs. Our results contribute to a new way of thinking about kernels as a (quantum) hardware-efficient feature mapping, and lead to an interesting application for near-term quantum computing.

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