Continual Optimization with Symmetry Teleportation for Multi-Task Learning
About
Multi-task learning (MTL) is a widely explored paradigm that enables the simultaneous learning of multiple tasks using a single model. Despite numerous solutions, the key issues of optimization conflict and task imbalance remain under-addressed, limiting performance. Unlike existing optimization-based approaches that typically reweight task losses or gradients to mitigate conflicts or promote progress, we propose a novel approach based on Continual Optimization with Symmetry Teleportation (COST). During MTL optimization, when an optimization conflict arises, we seek an alternative loss-equivalent point on the loss landscape to reduce conflict. Specifically, we utilize a low-rank adapter (LoRA) to facilitate this practical teleportation by designing convergent, loss-invariant objectives. Additionally, we introduce a historical trajectory reuse strategy to continually leverage the benefits of advanced optimizers. Extensive experiments on multiple mainstream datasets demonstrate the effectiveness of our approach. COST is a plug-and-play solution that enhances a wide range of existing MTL methods. When integrated with state-of-the-art methods, COST achieves superior performance.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Scene Understanding | Cityscapes | mIoU75.73 | 18 | |
| Scene Understanding | NYU V2 | mIoU38.06 | 18 | |
| Multi-task Learning | QM9 | Mean Relative Error (MR)6.82 | 17 | |
| Multi-task Learning | CelebA | Misclassification Rate (MR)9.03 | 17 |