LGMLNov 19, 2018

Deep Frank-Wolfe For Neural Network Optimization

arXiv:1811.07591v341 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses the problem of efficient and effective neural network optimization for machine learning practitioners, offering an incremental improvement over existing methods.

The paper tackles the challenge of optimizing deep neural networks by introducing a method that combines good generalization with minimal hyperparameter tuning, demonstrating faster convergence than SGD with hand-designed schedules and outperforming several adaptive optimizers on CIFAR and SNLI datasets.

Learning a deep neural network requires solving a challenging optimization problem: it is a high-dimensional, non-convex and non-smooth minimization problem with a large number of terms. The current practice in neural network optimization is to rely on the stochastic gradient descent (SGD) algorithm or its adaptive variants. However, SGD requires a hand-designed schedule for the learning rate. In addition, its adaptive variants tend to produce solutions that generalize less well on unseen data than SGD with a hand-designed schedule. We present an optimization method that offers empirically the best of both worlds: our algorithm yields good generalization performance while requiring only one hyper-parameter. Our approach is based on a composite proximal framework, which exploits the compositional nature of deep neural networks and can leverage powerful convex optimization algorithms by design. Specifically, we employ the Frank-Wolfe (FW) algorithm for SVM, which computes an optimal step-size in closed-form at each time-step. We further show that the descent direction is given by a simple backward pass in the network, yielding the same computational cost per iteration as SGD. We present experiments on the CIFAR and SNLI data sets, where we demonstrate the significant superiority of our method over Adam, Adagrad, as well as the recently proposed BPGrad and AMSGrad. Furthermore, we compare our algorithm to SGD with a hand-designed learning rate schedule, and show that it provides similar generalization while converging faster. The code is publicly available at https://github.com/oval-group/dfw.

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