Principal Gradient Direction and Confidence Reservoir Sampling for Continual Learning
This work addresses catastrophic forgetting for continual learning systems, offering incremental improvements to existing replay-based methods.
The paper tackled catastrophic forgetting in task-free online continual learning by proposing two improvements to Experience Replay: Principal Gradient Direction and Confidence Reservoir Sampling, which increased average accuracy by up to 7.9% and reduced forgetting by up to 15.4% on four datasets.
Task-free online continual learning aims to alleviate catastrophic forgetting of the learner on a non-iid data stream. Experience Replay (ER) is a SOTA continual learning method, which is broadly used as the backbone algorithm for other replay-based methods. However, the training strategy of ER is too simple to take full advantage of replayed examples and its reservoir sampling strategy is also suboptimal. In this work, we propose a general proximal gradient framework so that ER can be viewed as a special case. We further propose two improvements accordingly: Principal Gradient Direction (PGD) and Confidence Reservoir Sampling (CRS). In Principal Gradient Direction, we optimize a target gradient that not only represents the major contribution of past gradients, but also retains the new knowledge of the current gradient. We then present Confidence Reservoir Sampling for maintaining a more informative memory buffer based on a margin-based metric that measures the value of stored examples. Experiments substantiate the effectiveness of both our improvements and our new algorithm consistently boosts the performance of MIR-replay, a SOTA ER-based method: our algorithm increases the average accuracy up to 7.9% and reduces forgetting up to 15.4% on four datasets.