DESCRIPTION (From applicant s abstract): This continuing project concerns
further work on the problem of measurement error in general regression
problems. The developed methodology will be applied to a number of data
sets that the investigators have in their possession. The research to be
performed falls into three broad categories.
1) Analysis of dietary intake data. Calibration studies that relate FFQs to
usual intake will be investigated. Missing data and optimal semiparametric
methods will be discussed. Estimating the distribution of usual intake will
be studied. A new method, called nonparametric calibration, will be
developed for relating dietary instruments to usual intake as an unknown
function of covariates such as body mass index.
2) Functional and structural nonlinear measurement error modeling. New
general methodology will be developed for nonlinear measurement error
modeling when no assumptions are made about the underlying distribution of
the error-prone predictor.
3) Semiparametric and dimension reduction methods.: Motivated by problems
in measurement error and missing data, the investigators will develop a
general theory of semiparametric plug-in estimation, in which a
semiparametric function is estimated and substituted into an unbiased
estimating equation. Within the Generalized Partially Linear Single-Index
Model (GPLSIM) family, results will be extended from quasi-likelihood models
to general regression problems. An important application of this extension
will be to nonparametric calibration in dietary intake studies.
Error Notice
The database may currently be offline for maintenance and should be operational soon. If not, we have been notified of this error and will be reviewing it shortly.
We apologize for the inconvenience.
- The DCCPS Team.