Online Continual Learning with Maximal Interfered Retrieval
Aljundi, Rahaf, Belilovsky, Eugene, Tuytelaars, Tinne, Charlin, Laurent, Caccia, Massimo, Lin, Min, Page-Caccia, Lucas
–Neural Information Processing Systems
Continual learning, the setting where a learning agent is faced with a never-ending stream of data, continues to be a great challenge for modern machine learning systems. In particular the online or "single-pass through the data" setting has gained attention recently as a natural setting that is difficult to tackle. Methods based on replay, either generative or from a stored memory, have been shown to be effective approaches for continual learning, matching or exceeding the state of the art in a number of standard benchmarks. These approaches typically rely on randomly selecting samples from the replay memory or from a generative model, which is suboptimal. In this work, we consider a controlled sampling of memories for replay.
Neural Information Processing Systems
Mar-19-2020, 01:31:16 GMT