Litcius/Paper detail

Mnemonics Training: Multi-Class Incremental Learning Without Forgetting

Liu, Y., Su, Y., Liu, A., Schiele, B., Sun, Q.

2020Institutional Knowledge (InK) - Institutional Knowledge at Singapore Management University (Singapore Management University)293 citations

Abstract

Multi-Class Incremental Learning (MCIL) aims to learn new concepts by incrementally updating a model trained on previous concepts. However, there is an inherent trade-off to effectively learning new concepts without catastrophic forgetting of previous ones. To alleviate this issue, it has been proposed to keep around a few examples of the previous concepts but the effectiveness of this approach heavily depends on the representativeness of these examples. This paper proposes a novel and automatic framework we call mnemonics, where we parameterize exemplars and make them optimizable in an end-to-end manner. We train the framework through bilevel optimizations, i.e., model-level and exemplar-level. We conduct extensive experiments on three MCIL benchmarks, CIFAR-100, ImageNet-Subset and ImageNet, and show that using mnemonics exemplars can surpass the state-of-the-art by a large margin. Interestingly and quite intriguingly, the mnemonics exemplars tend to be on the boundaries between different classes.

Topics & Concepts

MnemonicForgettingComputer scienceMargin (machine learning)Class (philosophy)Artificial intelligenceMachine learningRepresentativeness heuristicIncremental learningDiscriminative modelBenchmark (surveying)PsychologyCognitive psychologySocial psychologyGeographyGeodesyDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsHuman Pose and Action Recognition