Smooth Tchebycheff Scalarization for Multi-Objective Optimization
About
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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Depth Estimation | NYU V2 | -- | 167 | |
| Semantic segmentation | Cityscapes | Mean IoU69.52 | 68 | |
| Depth Estimation | Cityscapes | Abs. Err.0.0123 | 65 | |
| Surface Normal Estimation | NYU V2 | Mean Angular Error23.2045 | 65 | |
| Image Classification | CIFAR10 Rotation | Accuracy66.32 | 33 | |
| Semantic segmentation | NYU V2 | mIoU53.77 | 30 | |
| Image Classification | MNIST Rotation | Average Accuracy92.977 | 15 | |
| Classification | MNIST Partial Class C=2 (test) | Accuracy92.592 | 15 | |
| Image Classification | MNIST Partial Class C=5 | Accuracy94.14 | 15 | |
| Image Classification | MNIST Partial Class C=5 (test) | Average Accuracy94.14 | 15 |