180-7 Hierarchical Spatial and Spatio-Temporal Statistical Modeling for Environmental Applications.

See more from this Division: A11 Biometry
See more from this Session: Symposium--Time Series Analysis and Forecasting in Agriculture Research
Tuesday, November 2, 2010: 3:45 PM
Long Beach Convention Center, Room 102B, First Floor
Share |

Scott H. Holan, University of Missouri, Columbia, MO
Spatially and serially correlated data are ubiquitous in the environmental sciences.  In general, real-world environmental processes are complex, containing many sources of uncertainty, and thus it is often not feasible to consider these processes from a joint modeling perspective.  Instead, these processes often must be considered as a coherently linked system of conditional models.  As a consequence, in recent years, it has been increasingly recognized by statisticians that when modeling in the presence of uncertainties associated with observations, process and parameters, a hierarchical framework is particularly appealing.  This talk will provide a brief overview of hierarchical approaches to modeling environmental time series. Finally, the effectiveness of hierarchical modeling is illustrated through real environmental applications involving forecasting agricultural yield.
See more from this Division: A11 Biometry
See more from this Session: Symposium--Time Series Analysis and Forecasting in Agriculture Research