Brain-inspired continual pre-trained learner via silent synaptic consolidation
Xuming Ran, Juntao Yao, Yusong Wang, Mingkun Xu, Dianbo Liu

TL;DR
This paper introduces Artsy, a brain-inspired continual learning model that uses silent synaptic consolidation to improve knowledge retention and retrieval in pre-trained neural networks during incremental tasks.
Contribution
Artsy integrates biological synaptic mechanisms into neural networks to enhance continual learning, addressing stability-plasticity balance and information retrieval challenges.
Findings
Outperforms conventional methods on class-incremental tasks
Provides enhanced biological interpretability
Simulates biological synaptic mechanisms effectively
Abstract
Pre-trained models have demonstrated impressive generalization capabilities, yet they remain vulnerable to catastrophic forgetting when incrementally trained on new tasks. Existing architecture-based strategies encounter two primary challenges: 1) Integrating a pre-trained network with a trainable sub-network complicates the delicate balance between learning plasticity and memory stability across evolving tasks during learning. 2) The absence of robust interconnections between pre-trained networks and various sub-networks limits the effective retrieval of pertinent information during inference. In this study, we introduce the Artsy, inspired by the activation mechanisms of silent synapses via spike-timing-dependent plasticity observed in mature brains, to enhance the continual learning capabilities of pre-trained models. The Artsy integrates two key components: During training, the…
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Taxonomy
TopicsNeural Networks and Applications · Advanced Memory and Neural Computing · EEG and Brain-Computer Interfaces
