dataME {saeME} | R Documentation |
This data generated by simulation based on Fay-Herriot with Measurement Error Model by following these steps:
Generate x_{i}
from a UNIF(5, 10) distribution, \psi_{i}
= 3, c_{i}
= 0.25, and \sigma_{v}^{2}
= 2.
Generate u_{i}
from a N(0, c_{i}
) distribution, e_{i}
from a N(0, \psi_{i}
) distribution, and v_{i}
from a N(0, \sigma_{v}^{2}
) distribution.
Generate \hat{x}_{i}
= x_{i}
+ u_{i}
.
Then for each iteration, we generated Y_{i}
= 2 + 0.5 \hat{x}_{i} + v_{i}
and y_{i}
= Y_{i} + e_{i}
.
Direct estimator y
, auxiliary variable \hat{x}
, sampling variance \psi
, and c
are arranged in a dataframe called dataME
.
data(dataME)
A data frame with 100 observations on the following 4 variables.
small_area
areas of interest.
y
direct estimator for each domain.
x.hat
auxiliary variable for each domain.
vardir
sampling variances for each domain.
var.x
mean squared error of auxiliary variable and sorted as x.hat