Date(s) - 12/02/2016 - 12/03/2016
This Statistical Horizons class, Longitudinal Data Analysis Using SAS, taught by Paul Allison, Ph.D., runs from December 2-3 in Philadelphia, Pennsylvania.
The most common type of longitudinal data is panel data, consisting of measurements of predictor and response variables at two or more points in time for many individuals. Such data have two major attractions: the ability to control for unobservables, and the determination of causal ordering.
However, there is also a major difficulty with panel data: repeated observations are typically correlated and this invalidates the usual assumption that observations are independent. There are four widely available methods for dealing with dependence: robust standard errors, generalized estimating equations, random effects models and fixed effects models. This seminar examines each of these methods in some detail, with an eye to discerning their relative advantages and disadvantages. Different methods are considered for quantitative outcomes and categorical outcomes.
The fee of $995 includes all course materials. The early registration rate of $895 is available until November 2.