Stochastic Gradient Descent Learns State Equations with Nonlinear Activations

September 09, 2018 ยท Declared Dead ยท ๐Ÿ› Annual Conference Computational Learning Theory

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Authors Samet Oymak arXiv ID 1809.03019 Category cs.LG: Machine Learning Cross-listed math.OC, stat.ML Citations 45 Venue Annual Conference Computational Learning Theory Last Checked 3 months ago
Abstract
We study discrete time dynamical systems governed by the state equation $h_{t+1}=ฯ†(Ah_t+Bu_t)$. Here $A,B$ are weight matrices, $ฯ†$ is an activation function, and $u_t$ is the input data. This relation is the backbone of recurrent neural networks (e.g. LSTMs) which have broad applications in sequential learning tasks. We utilize stochastic gradient descent to learn the weight matrices from a finite input/state trajectory $(u_t,h_t)_{t=0}^N$. We prove that SGD estimate linearly converges to the ground truth weights while using near-optimal sample size. Our results apply to increasing activations whose derivatives are bounded away from zero. The analysis is based on i) a novel SGD convergence result with nonlinear activations and ii) careful statistical characterization of the state vector. Numerical experiments verify the fast convergence of SGD on ReLU and leaky ReLU in consistence with our theory.
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