Continual learning benefits from multiple sleep mechanisms: NREM, REM, and Synaptic Downscaling
Brian S. Robinson, Clare W. Lau, Alexander New, Shane M. Nichols, Erik, C. Johnson, Michael Wolmetz, and William G. Coon

TL;DR
This study demonstrates that integrating multiple sleep mechanisms—NREM, REM, and synaptic downscaling—into artificial neural networks enhances continual learning by reducing catastrophic forgetting and improving accuracy on image classification tasks.
Contribution
The paper introduces a novel approach combining three mammalian sleep components in artificial neural networks to improve continual learning performance.
Findings
All three sleep components improve CIFAR-100 classification accuracy.
Synaptic downscaling enhances retention of early tasks.
Trade-off exists between synaptic downscaling level and learning new tasks.
Abstract
Learning new tasks and skills in succession without losing prior learning (i.e., catastrophic forgetting) is a computational challenge for both artificial and biological neural networks, yet artificial systems struggle to achieve parity with their biological analogues. Mammalian brains employ numerous neural operations in support of continual learning during sleep. These are ripe for artificial adaptation. Here, we investigate how modeling three distinct components of mammalian sleep together affects continual learning in artificial neural networks: (1) a veridical memory replay process observed during non-rapid eye movement (NREM) sleep; (2) a generative memory replay process linked to REM sleep; and (3) a synaptic downscaling process which has been proposed to tune signal-to-noise ratios and support neural upkeep. We find benefits from the inclusion of all three sleep components when…
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Taxonomy
TopicsSleep and Wakefulness Research · EEG and Brain-Computer Interfaces · Advanced Memory and Neural Computing
MethodsQ-Learning · Dense Connections · Convolution · Deep Q-Network · Random Ensemble Mixture
