4.0 Article

A class of stochastic volatility models for environmental applications

期刊

JOURNAL OF TIME SERIES ANALYSIS
卷 32, 期 4, 页码 364-377

出版社

WILEY
DOI: 10.1111/j.1467-9892.2011.00735.x

关键词

Covariance function; Gaussian process; importance sampling; latent process; non-stationarity; nugget effect; stochastic volatility; C21; C23

资金

  1. National Science Foundation (NSF) [MSPA-CSE-0434354, DMS-0743459]
  2. NASA [NNG05GL07G]
  3. USDA/CSREES [2001-38700-11092]
  4. Division Of Mathematical Sciences
  5. Direct For Mathematical & Physical Scien [1107031] Funding Source: National Science Foundation

向作者/读者索取更多资源

Many environmental data sets have a continuous domain, in time and/or space, and complex features that may be poorly modelled with a stationary (in space and time) Gaussian process (GP). We adapt stochastic volatility modelling to this context, resulting in a stochastic heteroscedastic process (SHP), which is unconditionally stationary and non-Gaussian. Conditional on a latent GP, the SHP is a heteroscedastic GP with non-stationary (in space and time) covariance structure. The realizations from SHP are versatile and can represent spatial inhomogeneities. The unconditional correlation functions of SHP form a rich isotropic class that can allow for a smoothed nugget effect. We apply an importance sampling strategy to implement pseudo maximum likelihood parameter estimation for the SHP. To predict the process at unobserved locations, we develop a plug-in best predictor. We extend the single-realization SHP model to handle replicates across time of SHP realizations in space. Empirical results with simulated data show that SHP is nearly as efficient as a stationary GP in out-of-sample prediction when the true process is a stationary GP, and outperforms a stationary GP substantially when the true process is SHP. The SHP methodology is applied to enhanced vegetation index data and US NO3 deposition data for illustration.

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