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Class-Incremental Continual Learning into the eXtended DER-verse

About

The staple of human intelligence is the capability of acquiring knowledge in a continuous fashion. In stark contrast, Deep Networks forget catastrophically and, for this reason, the sub-field of Class-Incremental Continual Learning fosters methods that learn a sequence of tasks incrementally, blending sequentially-gained knowledge into a comprehensive prediction. This work aims at assessing and overcoming the pitfalls of our previous proposal Dark Experience Replay (DER), a simple and effective approach that combines rehearsal and Knowledge Distillation. Inspired by the way our minds constantly rewrite past recollections and set expectations for the future, we endow our model with the abilities to i) revise its replay memory to welcome novel information regarding past data ii) pave the way for learning yet unseen classes. We show that the application of these strategies leads to remarkable improvements; indeed, the resulting method - termed eXtended-DER (X-DER) - outperforms the state of the art on both standard benchmarks (such as CIFAR-100 and miniImagenet) and a novel one here introduced. To gain a better understanding, we further provide extensive ablation studies that corroborate and extend the findings of our previous research (e.g. the value of Knowledge Distillation and flatter minima in continual learning setups).

Matteo Boschini, Lorenzo Bonicelli, Pietro Buzzega, Angelo Porrello, Simone Calderara• 2022

Related benchmarks

TaskDatasetResultRank
Continual LearningCIFAR100 (test)
Mean Accuracy57.57
62
Continual LearningCIFAR-10 (test)
Final Average Accuracy (FAA)67.42
31
Continual LearningCIFAR-100 Split 10 sequential tasks (test)
Final Forgetting (FF)11.17
24
Continual LearningCIFAR-10 Split 5 sequential tasks (test)
Final Forgetting (FF)12.81
24
Continual LearningTinyImageNet Split 10 sequential tasks (test)
Final Forgetting18.87
24
Online Continual LearningCIFAR-10
Average AUC77.59
20
Online Continual LearningCIFAR-100
AAUC52.8
20
Online Continual LearningCIFAR-10 10/1 (test)
Accuracy43.2
20
Online Continual LearningCIFAR-100 1 (test)
Accuracy1.56e+3
20
Online Continual LearningMNIST 10/1 (test)
Accuracy83
20
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