Presenter: Justin Roth
Faculty Advisor: Robin Lock
My Phone: x6895
My email: x2jroth@stlawu.edu
Format: Poster
This project examines survival analysis with a focus on estimation techniques
for fitting lifetime distributions to survival data. Some examples
of survival data may include life spans after medical treatment, times
until mechanical components fail, or length of marriages. There are
several methods and ways to estimate parameters. The parametric models
studied include: (1) exponential, (2) lognormal, (3) gamma, and (4) Weibull.
The (5) Kaplan-Meier estimator is an alternative nonparametric technique
that is used to fit survival data. When trying to fit a lifetime
distribution, censoring may become an issue. Complete data sets include
all information for each subject, and censoring occurs when subjects leave
the study or outlast the length of the study. For each model, these
techniques are illustrated and compared with applications to simulated
and real data.