dataHBME | R Documentation |
This data generated by simulation based on Hierarchical Bayesian Method under Normal Distribution with Measurement Error by following these steps:
Generate x_{1}
~ UNIF(0, 1), x_{2}
~ UNIF(1,5), x_{3}
~ UNIF(10,15), and x_{4}
~ UNIF(10,20)
Generate v.x_{1}
~ Gamma(1,1) and v.x_{2}
~ Gamma(2,1)
Generate x_{1h}
~ N(x_{1}
, sqrt(v.x_{1}
)) and x_{2h}
~ N(x_{2}
, sqrt(v.x_{2}
))
Generate \beta_{0}
, \beta_{1}
, \beta_{2}
, \beta_{3}
, and \beta_{4}
Generate u
~ N(0,1) and v
~ 1/(Gamma(1,1))
Calculate \mu
= \beta_{0} + \beta_{1}*x_{1h} + \beta_{2}*x_{2h} + \beta_{3}*x_{3} + \beta_{4}*x_{4} + u
Generate Y
~ N(\mu
, sqrt(v
))
Direct estimation Y
, auxiliary variables x1 x2 x3 x4
, sampling variance v
, and mean squared error of auxiliary variables v.x1 v.x2
are arranged in a dataframe called dataHBME
.
data(dataHBME)
A data frame with 30 observations on the following 8 variables.
Y
direct estimation of Y.
x1
auxiliary variable of x1.
x2
auxiliary variable of x2.
x3
auxiliary variable of x3.
x4
auxiliary variable of x4.
vardir
sampling variances of Y.
v.x1
mean squared error of x1.
v.x2
mean squared error of x2.
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