Random Models, Nested and Split-plot Designs
Offered By: Arizona State University via Coursera
Course Description
Overview
Many experiments involve factors whose levels are chosen at random. A well-know situation is the study of measurement systems to determine their capability. This course presents the design and analysis of these types of experiments, including modern methods for estimating the components of variability in these systems. The course also covers experiments with nested factors, and experiments with hard-to-change factors that require split-plot designs. We also provide an overview of designs for experiments with response distributions from nonnormal response distributions and experiments with covariates.
Syllabus
- Unit 1: Experiments with Random Factors
- Unit 2: Nested and Split-Plot Designs
- Unit 3: Other Design and Analysis Topics
Taught by
Douglas C. Montgomery
Tags
Related Courses
The Data Scientist’s ToolboxJohns Hopkins University via Coursera MARS2014-1x: Metabolic Applied Research Strategy
Ethicon via Independent Experimentation for Improvement
McMaster University via Coursera Molecular Biology - Part 1: DNA Replication and Repair
Massachusetts Institute of Technology via edX Introduction to Linear Models and Matrix Algebra
Harvard University via edX