We present a novel Metropolis-Hastings method for large datasets that uses small expected-size minibatches of data. Previous work on reducing the cost of Metropolis-Hastings tests yield variable data consumed per sample, with only constant factor reductions versus using the full dataset for each sample. Here we present a method that can be tuned to provide arbitrarily small batch sizes, by adjusting either proposal step size or temperature. Our test uses the noise-tolerant Barker acceptance test with a novel additive correction variable. The resulting test has similar cost to a normal SGD update. Our experiments demonstrate several order-of-magnitude speedups over previous work.
CITATION STYLE
KUMAGAI, A. F., & GRAF, V. (2000). Ichneumonidae (Hymenoptera) de áreas urbana e rural de Curitiba, Paraná, Brasil. Acta Biológica Paranaense, 29. https://doi.org/10.5380/abpr.v29i0.588
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