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Poster
in
Workshop: Meta-Learning

Training more effective learned optimizers

Luke Metz


Abstract:

Much as replacing hand-designed features with learned functions has revolutionized how we solve perceptual tasks, we believe learning algorithms will transform how we train models. In this work, we focus on general-purpose learned optimizers capable of training a wide variety of problems with no user-specified hyperparameters. We introduce a new, neural network parameterized, hierarchical optimizer with access to additional features such as validation loss to enable automatic regularization. Most learned optimizers have been trained on only a single task or a small number of tasks. We train our optimizers on thousands of tasks, making use of orders of magnitude more compute, resulting in optimizers that generalize better to unseen tasks. The learned optimizers not only perform well but learn behaviors that are distinct from existing first-order optimizers. For instance, they generate update steps that have implicit regularization and adapt as the problem hyperparameters (e.g. batch size) or architecture (e.g. neural network width) change. Finally, these learned optimizers show evidence of being useful for out of distribution tasks such as training themselves from scratch.