##Statistics Seminar##\\ Department of Mathematical Sciences
^ **DATE:**|Thursday, May 3, 2018 |
^ **TIME:**|1:00pm -- 2:15pm |
^ **LOCATION:**|WH 100E |
^ **SPEAKER:**|Junyi Dong, Binghamton University |
^ **TITLE:**|Marginal Distribution Method |
\\
**Abstract**
Let Z be the covariate vector and Y
be the response variable with the joint cumulative distribution function
F. Given a random sample from F,
in order to analyze the data based on a certain
proportional hazards (PH) model,
one needs to test the null hypothesis Ho:
F belongs to the Ph model first.
The existing tests to achieve this task make use of the residuals and
are invalid in certain situations, such as
when
$F$ is not
from any PH model. To overcome this disadvantage,
we propose a valid model checking test of Ho.
It is based on the weighted average of the difference between
two estimators of the marginal distribution
of the response variable: its non-parametric maximum likelihood
estimator
and its estimator under the PH model.
This test is called the marginal distribution (MD) test.
We give the theoretical justification of the MD test.
The simulation study suggests that
the MD test is always consistent,
whereas
the existing tests may be invalid and they are often unlikely to reject the wrong PH model assumption
when they are not valid.