Rapid Adaptation in Online Continual Learning: Are We Evaluating It Right?

Abstract

We revisit the common practice of evaluating adaptation of Online Continual Learning (OCL) algorithms through the metric of online accuracy, which measures the accuracy of the model on the immediate next few samples. However, we show that this metric is unreliable, as even vacuous blind classifiers, which do not use input images for prediction, can achieve unrealistically high online accuracy by exploiting spurious label correlations in the data stream. Our study reveals that existing OCL algorithms can also achieve high online accuracy, but perform poorly in retaining useful information, suggesting that they unintentionally learn spurious label correlations. To address this issue, we propose a novel metric for measuring adaptation based on the accuracy on the near-future samples, where spurious correlations are removed. We benchmark existing OCL approaches using our proposed metric on large-scale datasets under various computational budgets and find that better generalization can be achieved by retaining and reusing past seen information. We believe that our proposed metric can aid in the development of truly adaptive OCL methods.

Type
Publication
International Conference on Computer Vision (ICCV)
Hasan Abed Al Kader Hammoud
Hasan Abed Al Kader Hammoud
PhD Student

Hasan is an Electrical and Computer Engineering Ph.D. student in Image and Video Understanding Lab (IVUL) Group in the Artificial Intelligence Initiative (AII) at King Abdullah University of Science and Technology (KAUST) under the supervision of Professor Bernard Ghanem.