Department of Statistics Seminar
North Carolina State University
presents
Dr. Shanti Gomatam
NISS & University of South Florida
"On Nonparametric Regression for Current Status Data"
ABSTRACT
We study the problem of nonparametric estimation of the conditional
distribution function when we have current status data on the outcome
variable and a single continuous-valued covariate. An estimator of
the conditional distribution function $F(Y|X=x)$, called the local
nonparametric maximum likelihood estimator (LNPMLE) is proposed. This
estimator is a locally weighted version of the nonparametric maximum
likelihood estimator~(NPMLE) for current status data in the absence of
covariates.
The primary goal of this work is to obtain an expression for the
optimal bandwidth used to pick neighborhood size. The asymptotic
distribution of the LNPMLE of the conditional distribution function at
a point, $F(t|X=x)$, is studied, and the asymptotically optimal
bandwidth is shown to be of the order $n^{-1/7}$.
The LNPMLE of the conditional distribution function can be obtained as
a solution to a weighted isotonic regression problem.
A plug-in estimate is suggested for the bandwidth, and the computation
of the LNPMLE is illustrated on a simulated sample.
Friday, November, 15, 2002
3:35 - 4:35 pm
206 Cox Hall
Refreshments will be served on the second floor of Dabney Hall (left of Room 222) at 3:00 pm.