Continual learning under domain transfer with sparse synaptic bursting
Shawn L. Beaulieu, Jeff Clune, Nick Cheney

TL;DR
This paper presents a continual learning system that uses sparse synaptic bursting and top-down regulation to learn sequentially from new datasets like ImageNet and CIFAR-100, minimizing catastrophic forgetting.
Contribution
It introduces a novel method combining top-down neural regulation and sparse synaptic activity to enable continual learning without task-specific modules.
Findings
Balances activity and suppression in weights for learning without forgetting
Learns continually over unseen datasets with minimal forgetting
Emerges from a meta-learning phase with synaptic disinhibition
Abstract
Existing machines are functionally specific tools that were made for easy prediction and control. Tomorrow's machines may be closer to biological systems in their mutability, resilience, and autonomy. But first they must be capable of learning and retaining new information without being exposed to it arbitrarily often. Past efforts to engineer such systems have sought to build or regulate artificial neural networks using disjoint sets of weights that are uniquely sensitive to specific tasks or inputs. This has not yet enabled continual learning over long sequences of previously unseen data without corrupting existing knowledge: a problem known as catastrophic forgetting. In this paper, we introduce a system that can learn sequentially over previously unseen datasets (ImageNet, CIFAR-100) with little forgetting over time. This is done by controlling the activity of weights in a…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Machine Learning and ELM · Advanced Memory and Neural Computing
