ogmix {lrmest} | R Documentation |
Ordinary Generalized Mixed Regression Estimator
Description
ogmix
can be used to obtain the Mixed Regression Estimated values and corresponding scalar Mean Square Error (MSE) value.
Usage
ogmix(formula, r, R, dpn, delt, data, na.action, ...)
Arguments
formula |
in this section interested model should be given. This should be given as a |
r |
is a |
R |
is a |
dpn |
dispersion matrix of vector of disturbances of linear restricted model, |
delt |
values of |
data |
an optional data frame, list or environment containing the variables in the model. If not found in |
na.action |
if the dataset contain |
... |
currently disregarded. |
Details
Since formula has an implied intercept term, use either y ~ x - 1
or y ~ 0 + x
to remove the intercept.
In order to calculate the Ordinary Generalized Mixed Regression Estimator the prior information are required. Therefore those prior information should be mentioned within the function.
Value
ogmix
returns the Ordinary Generalized Mixed Regression Estimated values, standard error values, t statistic values,p value and corresponding scalar MSE value.
Author(s)
P.Wijekoon, A.Dissanayake
References
Arumairajan, S. and Wijekoon, P. (2015) ] Optimal Generalized Biased Estimator in Linear Regression Model in Open Journal of Statistics, pp. 403–411
Theil, H. and Goldberger, A.S. (1961) On pure and mixed statistical estimation in economics in International Economic review, volume 2, pp. 65–78
Examples
## Portland cement data set is used.
data(pcd)
r<-c(2.1930,1.1533,0.75850)
R<-c(1,0,0,0,0,1,0,0,0,0,1,0)
dpn<-c(0.0439,0.0029,0.0325)
delt<-c(0,0,0)
ogmix(Y~X1+X2+X3+X4-1,r,R,dpn,delt,data=pcd)
# Model without the intercept is considered.