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Three types of incremental learning.

Published version
Peer-reviewed

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Abstract

Incrementally learning new information from a non-stationary stream of data, referred to as 'continual learning', is a key feature of natural intelligence, but a challenging problem for deep neural networks. In recent years, numerous deep learning methods for continual learning have been proposed, but comparing their performances is difficult due to the lack of a common framework. To help address this, we describe three fundamental types, or 'scenarios', of continual learning: task-incremental, domain-incremental and class-incremental learning. Each of these scenarios has its own set of challenges. To illustrate this, we provide a comprehensive empirical comparison of currently used continual learning strategies, by performing the Split MNIST and Split CIFAR-100 protocols according to each scenario. We demonstrate substantial differences between the three scenarios in terms of difficulty and in terms of the effectiveness of different strategies. The proposed categorization aims to structure the continual learning field, by forming a key foundation for clearly defining benchmark problems.

Description

Funder: International Brain Research Organization (IBRO); doi: https://doi.org/10.13039/501100001675

Journal Title

Nat Mach Intell

Conference Name

Journal ISSN

2522-5839
2522-5839

Volume Title

4

Publisher

Springer Nature

Rights and licensing

Except where otherwised noted, this item's license is described as http://creativecommons.org/licenses/by/4.0/
Sponsorship
EC | EU Framework Programme for Research and Innovation H2020 | H2020 Priority Excellent Science | H2020 European Research Council (H2020 Excellent Science - European Research Council) (101021347)
United States Department of Defense | Defense Advanced Research Projects Agency (DARPA) (HR0011-18-2-0025)
ODNI | Intelligence Advanced Research Projects Activity (IARPA) (D16PC00003)
U.S. Department of Health & Human Services | National Institutes of Health (NIH) (R01MH109556, P30EY002520)