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arxiv: 2203.02400 · v1 · pith:7SL36IWL · submitted 2022-03-04 · quant-ph · cs.LG

Quantum Approximate Optimization Algorithm for Bayesian network structure learning

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classification quant-ph cs.LG
keywords quantumbayesiannetworkalgorithmlearningoptimizationproblemstructure
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Bayesian network structure learning is an NP-hard problem that has been faced by a number of traditional approaches in recent decades. Currently, quantum technologies offer a wide range of advantages that can be exploited to solve optimization tasks that cannot be addressed in an efficient way when utilizing classic computing approaches. In this work, a specific type of variational quantum algorithm, the quantum approximate optimization algorithm, was used to solve the Bayesian network structure learning problem, by employing $3n(n-1)/2$ qubits, where $n$ is the number of nodes in the Bayesian network to be learned. Our results showed that the quantum approximate optimization algorithm approach offers competitive results with state-of-the-art methods and quantitative resilience to quantum noise. The approach was applied to a cancer benchmark problem, and the results justified the use of variational quantum algorithms for solving the Bayesian network structure learning problem.

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