2022
DOI: 10.21203/rs.3.rs-1407056/v1
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Unsupervised strategies for identifying optimal parameters in Quantum Approximate Optimization Algorithm

Abstract: As combinatorial optimization is one of the main quantum computing applications, many methods based on parameterized quantum circuits are being developed. In general, a set of parameters are being tweaked to optimize a cost function out of the quantum circuit output. One of these algorithms, the Quantum Approximate Optimization Algorithm stands out as a promising approach to tackle combinatorial problems, due to many interesting properties. However finding the appropriate parameters is a difficult task. Althou… Show more

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