MMD-Newton Method for Multi-objective Optimization
Hao Wang, Chenyu Shi, Angel E. Rodriguez-Fernandez, Oliver Sch\"utze

TL;DR
This paper introduces a novel MMD-based Newton method for multi-objective optimization, combining theoretical analysis with hybrid algorithms to improve Pareto front approximation accuracy.
Contribution
It proposes a new MMD-based Newton method for MOPs, including analytical gradient and Hessian derivations, and hybridizes it with evolutionary algorithms for enhanced performance.
Findings
Hybrid MMDN + MOEA outperforms EA alone in accuracy
Theoretical analysis confirms MMDN's convergence properties
Empirical tests on benchmark problems demonstrate effectiveness
Abstract
Maximum mean discrepancy (MMD) has been widely employed to measure the distance between probability distributions. In this paper, we propose using MMD to solve continuous multi-objective optimization problems (MOPs). For solving MOPs, a common approach is to minimize the distance (e.g., Hausdorff) between a finite approximate set of the Pareto front and a reference set. Viewing these two sets as empirical measures, we propose using MMD to measure the distance between them. To minimize the MMD value, we provide the analytical expression of its gradient and Hessian matrix w.r.t. the search variables, and use them to devise a novel set-oriented, MMD-based Newton (MMDN) method. Also, we analyze the theoretical properties of MMD's gradient and Hessian, including the first-order stationary condition and the eigenspectrum of the Hessian, which are important for verifying the correctness of…
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Taxonomy
TopicsAdvanced Multi-Objective Optimization Algorithms · Probabilistic and Robust Engineering Design · Gaussian Processes and Bayesian Inference
MethodsSparse Evolutionary Training
