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Kalman Gradient Descent: Adaptive Variance Reduction in Stochastic Optimization

Published 29 Oct 2018 in stat.ML, cs.LG, and math.OC | (1810.12273v1)

Abstract: We introduce Kalman Gradient Descent, a stochastic optimization algorithm that uses Kalman filtering to adaptively reduce gradient variance in stochastic gradient descent by filtering the gradient estimates. We present both a theoretical analysis of convergence in a non-convex setting and experimental results which demonstrate improved performance on a variety of machine learning areas including neural networks and black box variational inference. We also present a distributed version of our algorithm that enables large-dimensional optimization, and we extend our algorithm to SGD with momentum and RMSProp.

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