TL;DR
This paper introduces the Quantum Alternating Operator Ansatz, extending the Quantum Approximate Optimization Algorithm to include more general and efficient unitaries, broadening its applicability to constrained optimization and sampling problems.
Contribution
It generalizes the QAOA framework to support parametrized unitaries, enabling more flexible and efficient implementations for constrained quantum optimization problems.
Findings
Supports a larger set of states than original QAOA
Enables more efficient mixers for constrained problems
Facilitates early experimental exploration of quantum optimization
Abstract
The next few years will be exciting as prototype universal quantum processors emerge, enabling implementation of a wider variety of algorithms. Of particular interest are quantum heuristics, which require experimentation on quantum hardware for their evaluation, and which have the potential to significantly expand the breadth of quantum computing applications. A leading candidate is Farhi et al.'s Quantum Approximate Optimization Algorithm, which alternates between applying a cost-function-based Hamiltonian and a mixing Hamiltonian. Here, we extend this framework to allow alternation between more general families of operators. The essence of this extension, the Quantum Alternating Operator Ansatz, is the consideration of general parametrized families of unitaries rather than only those corresponding to the time-evolution under a fixed local Hamiltonian for a time specified by the…
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