Combining Explicit and Implicit Regularization for Efficient Learning in Deep Networks

June 01, 2023 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Dan Zhao arXiv ID 2306.00342 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.NE, stat.ML Citations 7 Venue Neural Information Processing Systems Last Checked 4 months ago
Abstract
Works on implicit regularization have studied gradient trajectories during the optimization process to explain why deep networks favor certain kinds of solutions over others. In deep linear networks, it has been shown that gradient descent implicitly regularizes toward low-rank solutions on matrix completion/factorization tasks. Adding depth not only improves performance on these tasks but also acts as an accelerative pre-conditioning that further enhances this bias towards low-rankedness. Inspired by this, we propose an explicit penalty to mirror this implicit bias which only takes effect with certain adaptive gradient optimizers (e.g. Adam). This combination can enable a degenerate single-layer network to achieve low-rank approximations with generalization error comparable to deep linear networks, making depth no longer necessary for learning. The single-layer network also performs competitively or out-performs various approaches for matrix completion over a range of parameter and data regimes despite its simplicity. Together with an optimizer's inductive bias, our findings suggest that explicit regularization can play a role in designing different, desirable forms of regularization and that a more nuanced understanding of this interplay may be necessary.
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