On the Neural Tangent Kernel of Deep Networks with Orthogonal Initialization
This work clarifies a theoretical misconception about training dynamics for researchers in deep learning optimization, showing incremental insights into initialization effects.
The paper tackles the problem of whether orthogonal initialization speeds up training in deep networks by analyzing neural tangent kernel (NTK) dynamics, proving that in the infinite-width NTK regime, orthogonal and Gaussian initializations yield equal NTKs and no training speedup, but empirical results show acceleration outside this regime with specific hyperparameters.
The prevailing thinking is that orthogonal weights are crucial to enforcing dynamical isometry and speeding up training. The increase in learning speed that results from orthogonal initialization in linear networks has been well-proven. However, while the same is believed to also hold for nonlinear networks when the dynamical isometry condition is satisfied, the training dynamics behind this contention have not been thoroughly explored. In this work, we study the dynamics of ultra-wide networks across a range of architectures, including Fully Connected Networks (FCNs) and Convolutional Neural Networks (CNNs) with orthogonal initialization via neural tangent kernel (NTK). Through a series of propositions and lemmas, we prove that two NTKs, one corresponding to Gaussian weights and one to orthogonal weights, are equal when the network width is infinite. Further, during training, the NTK of an orthogonally-initialized infinite-width network should theoretically remain constant. This suggests that the orthogonal initialization cannot speed up training in the NTK (lazy training) regime, contrary to the prevailing thoughts. In order to explore under what circumstances can orthogonality accelerate training, we conduct a thorough empirical investigation outside the NTK regime. We find that when the hyper-parameters are set to achieve a linear regime in nonlinear activation, orthogonal initialization can improve the learning speed with a large learning rate or large depth.