Meta Learning Backpropagation And Improving It

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Authors Louis Kirsch, Jรผrgen Schmidhuber arXiv ID 2012.14905 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.NE, stat.ML Citations 67 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Many concepts have been proposed for meta learning with neural networks (NNs), e.g., NNs that learn to reprogram fast weights, Hebbian plasticity, learned learning rules, and meta recurrent NNs. Our Variable Shared Meta Learning (VSML) unifies the above and demonstrates that simple weight-sharing and sparsity in an NN is sufficient to express powerful learning algorithms (LAs) in a reusable fashion. A simple implementation of VSML where the weights of a neural network are replaced by tiny LSTMs allows for implementing the backpropagation LA solely by running in forward-mode. It can even meta learn new LAs that differ from online backpropagation and generalize to datasets outside of the meta training distribution without explicit gradient calculation. Introspection reveals that our meta learned LAs learn through fast association in a way that is qualitatively different from gradient descent.
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