Convergence of Continual Learning in Homogeneous Deep Networks
Abstract
We characterize weakly regularized continual classification in homogeneous models as sequential projections onto task margin sets. This result generalizes prior analyses restricted to either stationary (single-task) deep models or continual linear models. We show that global convergence generally fails, even for simple models linear in data but nonlinear in parameters. Nevertheless, by leveraging results from nonconvex projection theory, we identify regularity properties of homogeneous deep netw...
Description / Details
We characterize weakly regularized continual classification in homogeneous models as sequential projections onto task margin sets. This result generalizes prior analyses restricted to either stationary (single-task) deep models or continual linear models. We show that global convergence generally fails, even for simple models linear in data but nonlinear in parameters. Nevertheless, by leveraging results from nonconvex projection theory, we identify regularity properties of homogeneous deep networks that guarantee local linear convergence under random and cyclic task sequences. Finally, we extend our analysis to continual regression, unifying the framework for homogeneous models.
Source: arXiv:2606.30559v1 - http://arxiv.org/abs/2606.30559v1 PDF: https://arxiv.org/pdf/2606.30559v1 Original Link: http://arxiv.org/abs/2606.30559v1
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Jun 30, 2026
Mathematics
Mathematics
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