Online Structured Laplace Approximations for Overcoming Catastrophic Forgetting 2
–Neural Information Processing Systems
We introduce the Kronecker factored online Laplace approximation for overcoming catastrophic forgetting in neural networks. The method is grounded in a Bayesian online learning framework, where we recursively approximate the posterior after every task with a Gaussian, leading to a quadratic penalty on changes to the weights. The Laplace approximation requires calculating the Hessian around a mode, which is typically intractable for modern architectures. In order to make our method scalable, we leverage recent block-diagonal Kronecker factored approximations to the curvature. Our algorithm achieves over 90% test accuracy across a sequence of 50 instantiations of the permuted MNIST dataset, substantially outperforming related methods for overcoming catastrophic forgetting.
Neural Information Processing Systems
Mar-27-2025, 04:36:15 GMT
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- North America (0.28)
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- Research Report (0.46)
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- Education > Educational Setting > Online (0.37)