BIOSTAT880: Statistical Analysis With Missing Data
- Graduate level
- Fall term(s) for residential students;
- 3 credit hour(s) for residential students;
- Instructor(s): Little, Roderick (Residential);
- Prerequisites: Biostat 602 and 651, and at least one of Biostat 690, Biostat 851, Biostat 890, or Biostat 895 or Perm Inst.
- Description: Statistical analysis of data sets with missing values. Pros and cons of standard methods such as complete-case analysis, imputation. Likelihood-based inference for common statistical problems, including regression, repeated-measures analysis, and contingency table analysis. Stochastic censoring models for nonrandom nonresponse. Computational tools include the EM algorithm, the Gibbs' sampler, and multiple imputation.
- Syllabus for BIOSTAT880