July 15, 2022, 1:11 a.m. | Gregory Benton, Wesley J. Maddox, Andrew Gordon Wilson

stat.ML updates on arXiv.org arxiv.org

A broad class of stochastic volatility models are defined by systems of
stochastic differential equations. While these models have seen widespread
success in domains such as finance and statistical climatology, they typically
lack an ability to condition on historical data to produce a true posterior
distribution. To address this fundamental limitation, we show how to re-cast a
class of stochastic volatility models as a hierarchical Gaussian process (GP)
model with specialized covariance functions. This GP model retains the
inductive biases …

accurate forecasting arxiv forecasting gaussian processes lg moving processes

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