Sleep prevents catastrophic forgetting in spiking neural networks by forming a joint synaptic weight representation.
Ryan GoldenJean Erik DelanoisPavel SandaMaxim BazhenovPublished in: PLoS computational biology (2022)
Artificial neural networks overwrite previously learned tasks when trained sequentially, a phenomenon known as catastrophic forgetting. In contrast, the brain learns continuously, and typically learns best when new training is interleaved with periods of sleep for memory consolidation. Here we used spiking network to study mechanisms behind catastrophic forgetting and the role of sleep in preventing it. The network could be trained to learn a complex foraging task but exhibited catastrophic forgetting when trained sequentially on different tasks. In synaptic weight space, new task training moved the synaptic weight configuration away from the manifold representing old task leading to forgetting. Interleaving new task training with periods of off-line reactivation, mimicking biological sleep, mitigated catastrophic forgetting by constraining the network synaptic weight state to the previously learned manifold, while allowing the weight configuration to converge towards the intersection of the manifolds representing old and new tasks. The study reveals a possible strategy of synaptic weights dynamics the brain applies during sleep to prevent forgetting and optimize learning.
Keyphrases
- physical activity
- neural network
- body mass index
- weight loss
- sleep quality
- working memory
- weight gain
- body weight
- resistance training
- resting state
- magnetic resonance
- virtual reality
- white matter
- depressive symptoms
- computed tomography
- functional connectivity
- high intensity
- subarachnoid hemorrhage
- cerebral ischemia
- blood brain barrier