Revisiting Flatness-Aware Optimization in Continual Learning With Orthogonal Gradient Projection

Enneng Yang;Li Shen;Zhenyi Wang;Shiwei Liu;Guibing Guo;Xingwei Wang;Dacheng Tao
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Abstract

The goal of continual learning (CL) is to learn from a series of continuously arriving new tasks without forgetting previously learned old tasks. To avoid catastrophic forgetting of old tasks, orthogonal gradient projection (OGP) based CL methods constrain the gradients of new tasks to be orthogonal to the space spanned by old tasks. This strict gradient constraint will limit the learning ability of new tasks, resulting in lower performance on new tasks. In this paper, we first establish a unified framework for OGP-based CL methods. We then revisit OGP-based CL methods from a new perspective on the loss landscape, where we find that when relaxing projection constraints to improve performance on new tasks, the unflatness of the loss landscape can lead to catastrophic forgetting of old tasks. Based on our findings, we propose a new Dual Flatness-aware OGD framework that optimizes the flatness of the loss landscape from both data and weight levels. Our framework consists of three modules: data and weight perturbation, flatness-aware optimization, and gradient projection. Specifically, we first perform perturbations on the task's data and current model weights to make the task's loss reach the worst-case. Next, we optimize the loss and loss landscape on the original data and the worst-case perturbed data to obtain a flatness-aware gradient. Finally, the flatness-aware gradient will update the network in directions orthogonal to the space spanned by the old tasks. Extensive experiments on four benchmark datasets show that the framework improves the flatness of the loss landscape and performance on new tasks, and achieves state-of-the-art (SOTA) performance on average accuracy across all tasks.
正交梯度投影持续学习中的平面感知优化问题重述
持续学习(CL)的目标是从一系列不断出现的新任务中学习,而不会忘记以前学过的旧任务。为了避免旧任务的灾难性遗忘,基于正交梯度投影(OGP)的CL方法将新任务的梯度约束为与旧任务所跨越的空间正交。这种严格的梯度约束会限制新任务的学习能力,导致新任务的性能下降。本文首先为基于ogp的CL方法建立了一个统一的框架。然后,我们从一个新的角度重新审视了基于ogp的CL方法,我们发现,当放松投影约束以提高新任务的性能时,损失景观的不平坦可能导致旧任务的灾难性遗忘。基于我们的发现,我们提出了一个新的双平面感知OGD框架,从数据和权重级别优化损失景观的平面性。我们的框架由三个模块组成:数据和权重扰动、平面感知优化和梯度投影。具体来说,我们首先对任务的数据和当前模型权重进行扰动,使任务的损失达到最坏情况。接下来,我们对原始数据和最坏情况扰动数据的损失和损失格局进行优化,以获得平坦度感知梯度。最后,平面感知梯度将在与旧任务所跨越的空间正交的方向上更新网络。在四个基准数据集上的大量实验表明,该框架改善了损失格局的平坦性和新任务的性能,并在所有任务的平均准确率上达到了最先进(SOTA)的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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