NORACL: Neurogenesis for Oracle-free Resource-Adaptive Continual Learning
Karthik Charan Raghunathan, Christian Metzner, Laura Kriener, Melika Payvand

TL;DR
NORACL introduces neurogenesis-inspired neuronal growth to continual learning models, dynamically expanding capacity to balance stability and plasticity without prior knowledge of future tasks.
Contribution
It proposes a novel neurogenesis-based architecture that grows neurons as needed, outperforming fixed-capacity models in various task scenarios.
Findings
NORACL achieves comparable or better accuracy than oracle-sized static models.
The architecture exhibits interpretable growth patterns aligned with task similarity.
NORACL effectively creates capacity for new tasks, mitigating plasticity loss.
Abstract
In a continual learning setting, we require a model to be plastic enough to learn a new task and stable enough to not disturb previously learned capabilities. We argue that this dilemma has an architectural root. A finite network has limited representational and plastic resources, yet the required capacity depends on properties of the future task stream that are unknown: how many tasks will be encountered, and how much they overlap in feature space. Regularization-based methods preserve past knowledge within fixed-capacity architectures and therefore implicitly rely on an oracle architecture sized for this unknown future. When tasks are only weakly related, fixed architectures progressively run out of plastic resources; when tasks are few or strongly overlapping, models are often over-provisioned. Inspired by neurogenesis in biology, we propose NORACL to address the stability-plasticity…
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