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Main Authors: Liu, Shanqing, Chen, Paula, Lee, Youngkyu, Darbon, Jerome
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.11515
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author Liu, Shanqing
Chen, Paula
Lee, Youngkyu
Darbon, Jerome
author_facet Liu, Shanqing
Chen, Paula
Lee, Youngkyu
Darbon, Jerome
contents We develop a new Hamiton-Jacobi (HJ) and differential game approach for exploring the Pareto front of (constrained) multi-objective optimization (MOO) problems. Given a preference function, we embed the scalarized MOO problem into the value function of a parameterized zero-sum game, whose upper value solves a first-order HJ equation that admits a Hopf-Lax representation formula. For each parameter value, this representation yields an inner minimizer that can be interpreted as an approximate solution to a shifted scalarization of the original MOO problem. Under mild assumptions, the resulting family of solutions maps to a dense subset of the weak Pareto front. Finally, we propose a primal-dual algorithm based on this approach for solving the corresponding optimality system. Numerical experiments show that our algorithm mitigates the curse of dimensionality (scaling polynomially with the dimension of the decision and objective spaces) and is able to expose continuous curves along nonconvex Pareto fronts in 100D in just $\sim$100 seconds.
format Preprint
id arxiv_https___arxiv_org_abs_2602_11515
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Algorithms and Differential Game Representations for Exploring Nonconvex Pareto Fronts in High Dimensions
Liu, Shanqing
Chen, Paula
Lee, Youngkyu
Darbon, Jerome
Optimization and Control
We develop a new Hamiton-Jacobi (HJ) and differential game approach for exploring the Pareto front of (constrained) multi-objective optimization (MOO) problems. Given a preference function, we embed the scalarized MOO problem into the value function of a parameterized zero-sum game, whose upper value solves a first-order HJ equation that admits a Hopf-Lax representation formula. For each parameter value, this representation yields an inner minimizer that can be interpreted as an approximate solution to a shifted scalarization of the original MOO problem. Under mild assumptions, the resulting family of solutions maps to a dense subset of the weak Pareto front. Finally, we propose a primal-dual algorithm based on this approach for solving the corresponding optimality system. Numerical experiments show that our algorithm mitigates the curse of dimensionality (scaling polynomially with the dimension of the decision and objective spaces) and is able to expose continuous curves along nonconvex Pareto fronts in 100D in just $\sim$100 seconds.
title Algorithms and Differential Game Representations for Exploring Nonconvex Pareto Fronts in High Dimensions
topic Optimization and Control
url https://arxiv.org/abs/2602.11515