BinPlay: A Binary Latent Autoencoder for Generative Replay Continual Learning
November 25, 2020 ยท Declared Dead ยท ๐ IEEE International Joint Conference on Neural Network
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Authors
Kamil Deja, Paweล Wawrzyลski, Daniel Marczak, Wojciech Masarczyk, Tomasz Trzciลski
arXiv ID
2011.14960
Category
cs.LG: Machine Learning
Citations
10
Venue
IEEE International Joint Conference on Neural Network
Last Checked
3 months ago
Abstract
We introduce a binary latent space autoencoder architecture to rehearse training samples for the continual learning of neural networks. The ability to extend the knowledge of a model with new data without forgetting previously learned samples is a fundamental requirement in continual learning. Existing solutions address it by either replaying past data from memory, which is unsustainable with growing training data, or by reconstructing past samples with generative models that are trained to generalize beyond training data and, hence, miss important details of individual samples. In this paper, we take the best of both worlds and introduce a novel generative rehearsal approach called BinPlay. Its main objective is to find a quality-preserving encoding of past samples into precomputed binary codes living in the autoencoder's binary latent space. Since we parametrize the formula for precomputing the codes only on the chronological indices of the training samples, the autoencoder is able to compute the binary embeddings of rehearsed samples on the fly without the need to keep them in memory. Evaluation on three benchmark datasets shows up to a twofold accuracy improvement of BinPlay versus competing generative replay methods.
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