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arxiv: 1904.10120 · v1 · pith:65IFA7G7new · submitted 2019-04-23 · 💻 cs.LG · stat.ML

Semi-Cyclic Stochastic Gradient Descent

classification 💻 cs.LG stat.ML
keywords differentblock-cyclicperformancestructureupdatesallowsapproacharises
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We consider convex SGD updates with a block-cyclic structure, i.e. where each cycle consists of a small number of blocks, each with many samples from a possibly different, block-specific, distribution. This situation arises, e.g., in Federated Learning where the mobile devices available for updates at different times during the day have different characteristics. We show that such block-cyclic structure can significantly deteriorate the performance of SGD, but propose a simple approach that allows prediction with the same performance guarantees as for i.i.d., non-cyclic, sampling.

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