Geodesic-Aligned Gradient Projection for Continual Task Learning

Benliu Qiu;Heqian Qiu;Haitao Wen;Lanxiao Wang;Yu Dai;Fanman Meng;Qingbo Wu;Hongliang Li
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Abstract

Deep networks notoriously suffer from performance deterioration on previous tasks when learning from sequential tasks, i.e., catastrophic forgetting. Recent methods of gradient projection show that the forgetting is resulted from the gradient interference on old tasks and accordingly propose to update the network in an orthogonal direction to the task space. However, these methods assume the task space is invariant and neglect the gradual change between tasks, resulting in sub-optimal gradient projection and a compromise of the continual learning capacity. To tackle this problem, we propose to embed each task subspace into a non-Euclidean manifold, which can naturally capture the change of tasks since the manifold is intrinsically non-static compared to the Euclidean space. Subsequently, we analytically derive the accumulated projection between any two subspaces on the manifold along the geodesic path by integrating an infinite number of intermediate subspaces. Building upon this derivation, we propose a novel geodesic-aligned gradient projection (GAGP) method that harnesses the accumulated projection to mitigate catastrophic forgetting. The proposed method utilizes the geometric structure information on the task manifold by capturing the gradual change between the new and the old tasks. Empirical studies on image classification demonstrate that the proposed method alleviates catastrophic forgetting and achieves on-par or better performance compared to the state-of-the-art approaches.
连续任务学习的测地线对齐梯度投影
众所周知,深度网络在从顺序任务中学习时,在先前任务上的性能会下降,即灾难性遗忘。最近的梯度投影方法表明,遗忘是由于对旧任务的梯度干扰造成的,因此提出了在与任务空间正交的方向上更新网络的方法。然而,这些方法假设任务空间是不变的,而忽略了任务之间的渐变,导致梯度投影次优,并损害了持续学习能力。为了解决这个问题,我们建议将每个任务子空间嵌入到非欧几里得流形中,由于流形与欧几里得空间相比本质上是非静态的,因此可以自然地捕获任务的变化。然后,通过对无限个中间子空间的积分,导出流形上任意两个子空间沿测地线路径的累积投影。在此推导的基础上,我们提出了一种新的测地线对准梯度投影(GAGP)方法,该方法利用累积投影来减轻灾难性遗忘。该方法利用任务流形的几何结构信息,捕捉新旧任务之间的渐变过程。对图像分类的实证研究表明,该方法减轻了灾难性遗忘,达到了与现有方法相当或更好的性能。
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