Mario Motta, Tanvi Gujarati, et al.
ACS Spring 2021
The goal of multi-objective optimization is to understand optimal trade-offs between competing objective functions by finding the Pareto front, that is, the set of all Pareto-optimal solutions, where no objective can be improved without degrading another one. Multi-objective optimization can be challenging classically, even if the corresponding single-objective optimization problems are efficiently solvable. Thus, multi-objective optimization represents a compelling problem class to analyze with quantum computers. Here we use a low-depth quantum approximate optimization algorithm to approximate the optimal Pareto front of certain multi-objective weighted maximum-cut problems. We demonstrate its performance on an IBM Quantum computer, as well as with matrix product state numerical simulation, and show its potential to outperform classical approaches.
Mario Motta, Tanvi Gujarati, et al.
ACS Spring 2021
Federico Roy, Nicolas Wittler, et al.
APS March Meeting 2021
Dmitri Maslov, Jin-Sung Kim, et al.
QIP 2021
Thomas Steckmann, Alireza Seif, et al.
APS March Meeting 2024