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

Training-Free Diffusion-Driven Modeling of Pareto Set Evolution for Dynamic Multiobjective Optimization

About

Dynamic multiobjective optimization problems (DMOPs) feature time-varying objectives, which cause the Pareto optimal solution (POS) set to drift over time and make it difficult to maintain both convergence and diversity under limited response time. Many existing prediction-based dynamic multiobjective evolutionary algorithms (DMOEAs) either depend on learned models with nontrivial training cost or employ one-step population mapping, which may overlook the gradual nature of POS evolution. This paper proposes DD-DMOEA, a training-free diffusion-based dynamic response mechanism for DMOPs. The key idea is to treat the POS obtained in the previous environment as a "noisy" sample set and to guide its evolution toward the current POS through an analytically constructed multi-step denoising process. A knee-point-based auxiliary strategy is used to specify the target region in the new environment, and an explicit probability-density formulation is derived to compute the denoising update without neural training. To reduce the risk of misleading guidance caused by knee-point prediction errors, an uncertainty-aware scheme adaptively adjusts the guidance strength according to the historical prediction deviation. Experiments on the CEC2018 dynamic multiobjective benchmarks show that DD-DMOEA achieves competitive or better convergence-diversity performance and provides faster dynamic response than several state-of-the-art DMOEAs.

Jian Guan, Huolong Wu, Zhenzhong Wang, Gary G. Yen, Min Jiang• 2026

Related benchmarks

TaskDatasetResultRank
Dynamic Multi-objective OptimizationDF1 CEC2018
MIGD0.0227
32
Dynamic Multi-objective OptimizationDF2 CEC2018
MIGD0.0227
32
Dynamic Multi-objective OptimizationDF3 CEC2018
MIGD0.0689
32
Dynamic Multi-objective OptimizationDF6 CEC2018
MIGD0.469
32
Dynamic Multi-objective OptimizationDF7 CEC2018
MIGD0.1649
32
Dynamic Multi-objective OptimizationDF10 CEC2018
MIGD0.1668
32
Dynamic Multi-objective OptimizationDF14 CEC2018
MIGD0.0739
32
Dynamic Multi-objective OptimizationCEC DF2 2018
MHV0.8357
32
Dynamic Multi-objective OptimizationDF9 CEC2018
MIGD0.1101
32
Dynamic Multi-objective OptimizationDF13 CEC2018
MIGD0.2322
32
Showing 10 of 23 rows

Other info

Follow for update