MLCVLGJul 5, 2020

Pseudo-Rehearsal for Continual Learning with Normalizing Flows

arXiv:2007.02443v418 citations
AI Analysis

This addresses the problem of catastrophic forgetting for continual learning practitioners, offering an incremental improvement over existing methods.

The paper tackles catastrophic forgetting in neural networks by combining regularization and generative-based rehearsal using a normalizing flow trained on internal embeddings, achieving competitive performance with bounded computational and memory overheads.

Catastrophic forgetting (CF) happens whenever a neural network overwrites past knowledge while being trained on new tasks. Common techniques to handle CF include regularization of the weights (using, e.g., their importance on past tasks), and rehearsal strategies, where the network is constantly re-trained on past data. Generative models have also been applied for the latter, in order to have endless sources of data. In this paper, we propose a novel method that combines the strengths of regularization and generative-based rehearsal approaches. Our generative model consists of a normalizing flow (NF), a probabilistic and invertible neural network, trained on the internal embeddings of the network. By keeping a single NF conditioned on the task, we show that our memory overhead remains constant. In addition, exploiting the invertibility of the NF, we propose a simple approach to regularize the network's embeddings with respect to past tasks. We show that our method performs favorably with respect to state-of-the-art approaches in the literature, with bounded computational power and memory overheads.

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