This third article in a
series describing survival analysis of engineering
student retention and graduation introduces accelerated
failure-time as an alternative to the Cox proportional
hazards model to the context of student data. The new
survival analysis of graduation data presented here
assumes different distributions including exponential,
lognormal and Weibull, and assesses efficiency and
goodness of fit based on estimated parameters,
likelihood and number of observations. Results are
associated with the effects of American College Test and
Scholastic Assessment Test scores, gender, and other
demographic information on retention and graduation.
Some results confirm what we have previously learned
from proportional hazards models of graduation, and some
results are unique to accelerated failure-time models.
Key words:
Graduation, accelerated failure-time, retention,
survival analysis.