Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Uncertainty-Aware Offline Data-Driven Multi-Objective Optimization

About

In offline data-driven multi-objective optimization (MOO), optimization is performed using surrogate models trained only on an offline dataset. These surrogate models contain inherent errors and uncertainty. This epistemic uncertainty can lead to incorrect dominance judgments, thereby misleading the search process. Existing methods mitigate this issue by incorporating uncertainty estimates from Gaussian Process Regression (GPR) to correct dominance judgments; however, they are restricted to GPR, and their optimization strategies cannot be scaled to other uncertainty quantification methods. In addition, GPR-based surrogates suffer from high computational cost. We propose a simple yet effective dual-ranking strategy that flexibly leverages both predictive results and uncertainty estimates from different surrogate models. By performing non-dominated sorting on candidate solutions using both surrogate-based fitness values and uncertainty-aware fitness values, the proposed method prioritizes candidate solutions that are simultaneously high-quality and reliable. Through extensive experimental evaluations, including ablation, sensitivity, and comparative experiments, we demonstrate the effectiveness and robustness of the proposed dual-ranking strategy working with different surrogates. Our dual-ranking framework offers more robust solutions for data-limited, real-world applications.

Huanbo Lyu, Miqing Li, Shiqiao Zhou, Daniel Herring, Jelena Ninic, Zheming Zuo, Lingfeng Wang, James Andrews, Fabian Spill, Shuo Wang• 2025

Related benchmarks

TaskDatasetResultRank
Multi-Objective OptimizationDTLZ3
HV1.11
19
Offline Data-driven Multi-Objective OptimizationDTLZ1, DTLZ2, DTLZ3, DTLZ4, DTLZ5, DTLZ6, DTLZ7, and Omnitest unconstrained benchmarks
Overall Ranks2.42
18
Offline Multi-objective OptimizationOmnitest
MSE6.04e-11
16
Multi-Objective OptimizationDTLZ7
MSE1.41e-7
9
Offline Multi-objective OptimizationDTLZ2
MSE1.81e-8
9
Offline Multi-objective OptimizationDTLZ4
MSE0.0014
9
Offline Multi-objective OptimizationDTLZ5
MSE1.81e-8
9
Offline Multi-objective OptimizationDTLZ6
MSE0.909
9
Offline Multi-objective OptimizationDTLZ7
MSE2.40e-9
9
Multi-Objective OptimizationDTLZ5
MSE0.02
9
Showing 10 of 15 rows

Other info

Follow for update