통계연구소에서는 다음과 같이 통계 세미나를 개최하오니 많은 참여 바랍니다.

 

일시: 2011년 6월 8일(수) 오후 5시

장소: 고려대학교 정경관 501호

연사: Jun, Mikyoung

(Department of Statistics, Texas A&M University)

 

COVARIANCE APPROXIMATION FOR LARGE MULTIVARIATE SPATIAL DATASETS WITH AN APPLICATION TO MULTIPLE CLIMATE MODEL ERRORS

 

 

 

This paper investigates the cross-correlations across multiple climate model errors. We build a Bayesian hierarchical model that accounts for the spatial dependence of individual models as well as cross-covariances across different climate models. Our method allows for a non-separable and non-stationary cross-covariance structure. We also present a covariance approximation approach to facilitate the computation in the modeling and analysis of very large multivariate spatial data sets. The covariance approximation consists of two parts: a reduced-rank part to capture the large-scale spatial dependence, and a sparse covariance matrix to correct the small-scale dependence error induced by the reduced rank approximation. We pay special attention to the case that the second part of the approximation has a block-diagonal structure. Simulation results of model fitting and prediction show substantial improvement of the proposed approximation over the predictive process approximation and the independent blocks analysis. We then apply our computational approach to the joint statistical modeling of multiple climate model errors.