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Smooth Tchebycheff Scalarization for Multi-Objective Optimization

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Multi-objective optimization problems can be found in many real-world applications, where the objectives often conflict each other and cannot be optimized by a single solution. In the past few decades, numerous methods have been proposed to find Pareto solutions that represent optimal trade-offs among the objectives for a given problem. However, these existing methods could have high computational complexity or may not have good theoretical properties for solving a general differentiable multi-objective optimization problem. In this work, by leveraging the smooth optimization technique, we propose a lightweight and efficient smooth Tchebycheff scalarization approach for gradient-based multi-objective optimization. It has good theoretical properties for finding all Pareto solutions with valid trade-off preferences, while enjoying significantly lower computational complexity compared to other methods. Experimental results on various real-world application problems fully demonstrate the effectiveness of our proposed method.

Xi Lin, Xiaoyuan Zhang, Zhiyuan Yang, Fei Liu, Zhenkun Wang, Qingfu Zhang• 2024

Related benchmarks

TaskDatasetResultRank
Depth EstimationNYU V2--
167
Semantic segmentationCityscapes
Mean IoU69.52
68
Depth EstimationCityscapes
Abs. Err.0.0123
65
Surface Normal EstimationNYU V2
Mean Angular Error23.2045
65
Image ClassificationCIFAR10 Rotation
Accuracy66.32
33
Semantic segmentationNYU V2
mIoU53.77
30
Image ClassificationMNIST Rotation
Average Accuracy92.977
15
ClassificationMNIST Partial Class C=2 (test)
Accuracy92.592
15
Image ClassificationMNIST Partial Class C=5
Accuracy94.14
15
Image ClassificationMNIST Partial Class C=5 (test)
Average Accuracy94.14
15
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