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A * preceding a session name means that the session is an applied session.
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Keyword Search Criteria: Gradients returned 6 record(s)
Sunday, 08/04/2013
Spatial Process Gradients and Their Use in Sensitivity Analysis for Environmental Processes
Maria Terres, Duke University; Alan E. Gelfand, Duke University
5:05 PM

Gradient Extrapolated Stochastic Kriging
Michael Fu; Huashuai Qu, University of Maryland
5:05 PM

Tuesday, 08/06/2013
Modeling Health Outcomes via Values, Gradients, or Variation of Follicle-Stimulating Hormone in Penn Ovarian Aging Study
Bei Jiang, University of Michigan; Michael Elliott, University of Michigan; Mary Sammel, University of Pennsylvania; Naisyin Wang, University of Michigan
9:35 AM

Heteroscedastic CAR Models for Areally Referenced Temporal Processes with an Application to California Asthma Hospitalization Data
Harrison Quick, University of Minnesota; Bradley P. Carlin, University of Minnesota; Sudipto Banerjee, University of Minnesota
11:15 AM

Wednesday, 08/07/2013
Bayesian Inference for Temporal Gradients from Regionally Aggregated Space-Time Data
Sudipto Banerjee, University of Minnesota; Harrison Quick, University of Minnesota; Bradley P. Carlin, University of Minnesota
11:00 AM

Recent Developments in Gradient-Enhanced Kriging
Peter Marcy, University of Wyoming
3:20 PM




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