/SPDE-smoothing

Paper and materials for the paper "Understanding the stochastic partial differential equation approach to smoothing"

Primary LanguageR

Understanding the stochastic partial differential equation approach to smoothing

David L. Miller, Richard Glennie & Andrew E. Seaton

Paper accepted at the Journal of Agricultural, Biological and Environmental Statistics.

The paper and appendix are here, code examples are in supplementary/.

Abstract

Correlation and smoothness are terms used to describe a wide variety of random quantities. In time, space, and many other domains, they both imply the same idea: quantities that occur closer together are more similar than those further apart. Two popular statistical models that represent this idea are basis-penalty smoothers (Wood, 2017) and stochastic partial differential equations (SPDE) (Lindgren et al., 2011). In this paper, we discuss how the SPDE can be interpreted as a smoothing penalty and can be fitted using the R package mgcv, allowing practitioners with existing knowledge of smoothing penalties to better understand the implementation and theory behind the SPDE approach.