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Asymptotic Bias of Stochastic Gradient Search

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arxiv 1709.00291 v1 pith:EA57IAFC submitted 2017-08-30 math.ST math.OCstat.MLstat.TH

Asymptotic Bias of Stochastic Gradient Search

classification math.ST math.OCstat.MLstat.TH
keywords asymptoticgradientresultsalgorithmanalyzedbehaviorbiasrelying
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The asymptotic behavior of the stochastic gradient algorithm with a biased gradient estimator is analyzed. Relying on arguments based on the dynamic system theory (chain-recurrence) and the differential geometry (Yomdin theorem and Lojasiewicz inequality), tight bounds on the asymptotic bias of the iterates generated by such an algorithm are derived. The obtained results hold under mild conditions and cover a broad class of high-dimensional nonlinear algorithms. Using these results, the asymptotic properties of the policy-gradient (reinforcement) learning and adaptive population Monte Carlo sampling are studied. Relying on the same results, the asymptotic behavior of the recursive maximum split-likelihood estimation in hidden Markov models is analyzed, too.

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