Podchaser Logo
Home
01 - Predicting spatial exceedance regions - Noël Cressie

01 - Predicting spatial exceedance regions - Noël Cressie

Released Sunday, 11th January 2009
Good episode? Give it some love!
01 - Predicting spatial exceedance regions - Noël Cressie

01 - Predicting spatial exceedance regions - Noël Cressie

01 - Predicting spatial exceedance regions - Noël Cressie

01 - Predicting spatial exceedance regions - Noël Cressie

Sunday, 11th January 2009
Good episode? Give it some love!
Rate Episode

In geostatistics, a common problem is to predict a spatial exceedance and its exceedance region. This is scientifically important since unusual events tend to strongly impact the environment. Here, we use classes of loss functions based on image metrics (e.g., Baddeley's loss function) to predict the spatial-exceedance region. We then propose a joint loss to predict a spatial quantile and its exceedance region. The optimal predictor is obtained by minimizing the posterior expected loss given the process parameters, which we achieve by simulated annealing. Various predictors are compared through simulation. This methodology is applied to a spatial dataset of temperature change over the Americas. This research is joint with Jian Zhang and Peter Craigmile. Noel Cressie. Director, Program in Spatial Statistics and Environmental Sciences Department of Statistics The Ohio State University. Bande son disponible au format mp3 Durée : 44 mn

Show More

Unlock more with Podchaser Pro

  • Audience Insights
  • Contact Information
  • Demographics
  • Charts
  • Sponsor History
  • and More!
Pro Features