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Parametric Pareto Set Learning for Expensive Multi-Objective Optimization

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Parametric multi-objective optimization (PMO) addresses the challenge of solving an infinite family of multi-objective optimization problems, where optimal solutions must adapt to varying parameters. Traditional methods require re-execution for each parameter configuration, leading to prohibitive costs when objective evaluations are computationally expensive. To address this issue, we propose Parametric Pareto Set Learning with multi-objective Bayesian Optimization (PPSL-MOBO), a novel framework that learns a unified mapping from both preferences and parameters to Pareto-optimal solutions. PPSL-MOBO leverages a hypernetwork with Low-Rank Adaptation (LoRA) to efficiently capture parametric variations, while integrating Gaussian process surrogates and hypervolume-based acquisition to minimize expensive function evaluations. We demonstrate PPSL-MOBO's effectiveness on two challenging applications: multi-objective optimization with shared components, where certain design variables must be identical across solution families due to modular constraints, and dynamic multi-objective optimization, where objectives evolve over time. Unlike existing methods that cannot directly solve PMO problems in a unified manner, PPSL-MOBO learns a single model that generalizes across the entire parameter space. By enabling instant inference of Pareto sets for new parameter values without retraining, PPSL-MOBO provides an efficient solution for expensive PMO problems.

Ji Cheng, Bo Xue, Qingfu Zhang• 2025

Related benchmarks

TaskDatasetResultRank
Multi-Objective OptimizationDTLZ2
Hypervolume (HV)2.86
23
Multi-Objective OptimizationDTLZ1
Hypervolume (HV)3.20e+4
23
Multi-Objective OptimizationDTLZ3
HV2.71e+4
19
Multi-Objective Bayesian OptimizationUAV
Hypervolume58.5
10
Multi-Objective Bayesian OptimizationLaMP
Hypervolume0.609
10
Multi-Objective Bayesian Optimizationsolar
Hypervolume0.635
10
Multi-Objective Bayesian OptimizationMAGNETIC
Hypervolume0.0941
10
Inverse Model GeneralizationDTLZ-3
Hypervolume2.67e+4
5
Inverse Model GeneralizationDTLZ-2
Hypervolume2.98
5
Inverse Model GeneralizationUAV Controller Design
Hypervolume0.524
5
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