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Offline Multi-Task Multi-Objective Data-Driven Evolutionary Algorithm with Language Surrogate Model and Implicit Q-Learning

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Data-driven evolutionary algorithms has shown surprising results in addressing expensive optimization problems through robust surrogate modeling. Though promising, existing surrogate modeling schemes may encounter limitations in complex optimization problems with many sub-objectives, which rely on repeated and tedious approximation. To address such technical gap, we propose Q-MetaSur as a plug-and-play surrogate modeling scheme capable of providing unified and generalized surrogate learning. Specifically, we consider multi-task-multi-objective optimization~(MTMOO) in offline setting. Several key designs are proposed: 1) we transform objective approximation into sequence-to-sequence modeling where MTMOO problem can be represented by tenxual tokenization. To operate under such auto-regressive modeling, we introduce a Large Language Model-based surrogate model that first encodes a MTMOO instance and then decodes objective values of unseen decision variables. To ensure stability in training the proposed model, we propose a two-stage offline training strategy that operates as a synergy of supervised tuning and RL fine-tuning, which first exploits offline dataset to fit existing knowledge and then leverages RL to enhance model's generalization performance. Extensive empirical results on the CEC2019 benchmark demonstrate that Q-MetaSur not only outperforms representative surrogate baselines in objective approximation accuracy, but also helps underlying evolutionary algorithms achieve both desired optimization convergence and improved pareto optimality.

Xian-Rong Zhang, Yue-Jiao Gong, Zeyuan Ma, Jun Zhang• 2025

Related benchmarks

TaskDatasetResultRank
Surrogate ModelingCEC MTMOO Unseen Dimensions 21-28 2019
sMAE0.0322
32
Multi-objective Multi-task OptimizationSensor Coverage Optimization 30 heterogeneous tasks dimensions {6, 9, ..., 93}
MSS-0.841
10
Multi-Task Multi-Objective OptimizationCEC MTMOO ins2 2019
MSS-1.082
10
Multi-Task Multi-Objective OptimizationCEC MTMOO ins5 2019
MSS-0.67
10
Multi-Task Multi-Objective OptimizationCEC MTMOO ins6 2019
MSS-1.034
10
Multi-Task Multi-Objective OptimizationCEC MTMOO ins4 2019
MSS-0.756
10
Multi-Task Multi-Objective OptimizationCEC MTMOO ins1 2019
MSS-0.715
10
Multi-Task Multi-Objective OptimizationCEC MTMOO ins3 2019
MSS-0.936
10
Surrogate ModelingCEC MTMOO Instance 1 2019
sMAE (Obj0)6.93
4
Surrogate ModelingCEC MTMOO Instance 2 2019
sMAE (Obj0)0.00e+0
4
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