LGAINov 18, 2021

GCR: Gradient Coreset Based Replay Buffer Selection For Continual Learning

arXiv:2111.11210v3180 citations
Originality Incremental advance
AI Analysis

This addresses catastrophic forgetting for continual learning systems, offering incremental improvements in accuracy.

The paper tackles catastrophic forgetting in continual learning by proposing Gradient Coreset Replay (GCR), a replay buffer selection method that approximates gradients of all seen data, resulting in 2%-5% accuracy gains over state-of-the-art approaches in offline and online settings.

Continual learning (CL) aims to develop techniques by which a single model adapts to an increasing number of tasks encountered sequentially, thereby potentially leveraging learnings across tasks in a resource-efficient manner. A major challenge for CL systems is catastrophic forgetting, where earlier tasks are forgotten while learning a new task. To address this, replay-based CL approaches maintain and repeatedly retrain on a small buffer of data selected across encountered tasks. We propose Gradient Coreset Replay (GCR), a novel strategy for replay buffer selection and update using a carefully designed optimization criterion. Specifically, we select and maintain a "coreset" that closely approximates the gradient of all the data seen so far with respect to current model parameters, and discuss key strategies needed for its effective application to the continual learning setting. We show significant gains (2%-4% absolute) over the state-of-the-art in the well-studied offline continual learning setting. Our findings also effectively transfer to online / streaming CL settings, showing upto 5% gains over existing approaches. Finally, we demonstrate the value of supervised contrastive loss for continual learning, which yields a cumulative gain of up to 5% accuracy when combined with our subset selection strategy.

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