Resampling Approaches to Data Analysis
Resampling methods are approaches to conducting statistical inference (e.g., standard error estimation, confidence interval construction, hypothesis testing) that rely on the power and speed of computers to construct sampling distributions for statistics of interest. These methods are appealing for natural resource sciences because they offer a way to conduct inference without having to assume underlying distributions for collected data or statistics of interest. In this class, students are exposed to common resampling approaches including jackknifing, bootstrapping, and randomization/permutation testing. Particular attention is paid to bootstrapping with coverage including multiple approaches for constructing bootstrap confidence intervals and different bootstrap data generating methods. Although the course delves into some of the underlying theory for the various approaches, the primary focus of the course is application of the methods.
This class uses R and is designed for students who have at least a basic background in programming -- the equivalent of one semester of R, or any similar programming language (e.g., JavaScript, C...).
Instructor: Dr. Travis Brenden
Class Format and Sections
This class is being redone and will be offered as a short course in the future.
Purchasing the Class:
The course is not currently available for purchase.
MSU Guest Account (for non-MSU affiliated students)
Every student in the class needs an MSU account. If you are not affiliated with MSU then you can get an MSU Guest Account here.
For questions, to pay by check, or to purchase classes in bulk contact Charlie Belinsky at 517-355-0126 or belinsky@msu.edu