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On Constructing Confidence Region for Model Parameters in Stochastic Gradient Descent via Batch Means (1911.01483v2)

Published 4 Nov 2019 in stat.ML, cs.LG, math.ST, and stat.TH

Abstract: In this paper, we study a simple algorithm to construct asymptotically valid confidence regions for model parameters using the batch means method. The main idea is to cancel out the covariance matrix which is hard/costly to estimate. In the process of developing the algorithm, we establish process-level functional central limit theorem for Polyak-Ruppert averaging based stochastic gradient descent estimators. We also extend the batch means method to accommodate more general batch size specifications.

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