Skip to main content
Statistics
STAT
Statistics
Study
Prospective Students
Current Students
Research
Research Areas
Research Groups
People
All People
Faculty
Affiliate Faculty
Instructional Faculty
Research Scientists
Research Staff
Postdoctoral Fellows
Administrative Staff
Alumni
Students
News
Events
History
Al-Kindi
Al-Kindi Distinguished Statistics Lectures
Al-Kindi Student Awards
About
CEMSE Division
Apply
Social Network Analysis
Efficiency Assessment of Approximated Spatial Predictions for Large Datasets
Yiping Hong, Postdoctoral Research Fellow, Statistics
Oct 22, 12:00
-
13:00
KAUST
mathematics
applied statistics
Social Network Analysis
Our suggested criteria are more useful for the determination of tuning parameters for sophisticated approximation methods of spatial model fitting. To illustrate this, we investigate the trade-off between the execution time, estimation accuracy, and prediction efficiency for the TLR method with intensive simulation studies and suggest proper settings of the TLR tuning parameters.