2020
DOI: 10.48550/arxiv.2006.06102
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Multi-index Antithetic Stochastic Gradient Algorithm

Abstract: Stochastic Gradient Algorithms (SGAs) are ubiquitous in computational statistics, machine learning and optimisation. Recent years have brought an influx of interest in SGAs and the non-asymptotic analysis of their bias is by now well-developed. However, in order to fully understand the efficiency of Monte Carlo algorithms utilizing stochastic gradients, one also needs to carry out the analysis of their variance, which turns out to be problemspecific. For this reason, there is no systematic theory that would sp… Show more

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