Exploiting In-Constraint Energy in Constrained Variational Quantum
Optimization
- URL: http://arxiv.org/abs/2211.07016v1
- Date: Sun, 13 Nov 2022 20:58:00 GMT
- Title: Exploiting In-Constraint Energy in Constrained Variational Quantum
Optimization
- Authors: Tianyi Hao, Ruslan Shaydulin, Marco Pistoia, and Jeffrey Larson
- Abstract summary: In general, such constraints cannot be easily encoded in the circuit, and the quantum circuit measurement outcomes are not guaranteed to respect the constraints.
We propose a new approach for solving constrained optimization problems with unimplement, easy-to-constrained quantum ansatze.
We implement our method in QVoice, a Python package that interfaces with Qiskit for quick prototyping in simulators and on quantum hardware.
- Score: 7.541345730271882
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: A central challenge of applying near-term quantum optimization algorithms to
industrially relevant problems is the need to incorporate complex constraints.
In general, such constraints cannot be easily encoded in the circuit, and the
quantum circuit measurement outcomes are not guaranteed to respect the
constraints. Therefore, the optimization must trade off the in-constraint
probability and the quality of the in-constraint solution by adding a penalty
for constraint violation into the objective. We propose a new approach for
solving constrained optimization problems with unconstrained, easy-to-implement
quantum ansatze. Our method leverages the in-constraint energy as the objective
and adds a lower-bound constraint on the in-constraint probability to the
optimizer. We demonstrate significant gains in solution quality over directly
optimizing the penalized energy. We implement our method in QVoice, a Python
package that interfaces with Qiskit for quick prototyping in simulators and on
quantum hardware.
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