TY - JOUR
T1 - Robust linear mixed models for Small Area Estimation
AU - Fabrizi, Enrico
AU - Trivisano, Carlo
PY - 2009
Y1 - 2009
N2 - Hierarchical models are popular in many applied statistics fields including Small Area Estimation.
One well known model employed in this particular field is the Fay Herriot model, in
which unobservable parameters are assumed to be Gaussian. In Hierarchical models assumptions
about unobservable quantities are difficult to check. For a special case of the Fay Herriot
model, Sinharay and Stern [2003. Posterior predictive model checking in Hierarchical models.
J. Statist. Plann. Inference 111, 209 221] showed that violations of the assumptions about the
random effects are difficult to detect using posterior predictive checks. In this present paper
we consider two extensions of the Fay Herriot model in which the random effects are assumed
to be distributed according to either an exponential power (EP) distribution or a skewed EP
distribution. We aim to explore the robustness of the Fay Herriot model for the estimation
of individual area means as well as the empirical distribution function of their `ensemble'.
Our findings, which are based on a simulation experiment, are largely consistent with those
of Sinharay and Stern as far as the efficient estimation of individual small area parameters is
concerned. However, when estimating the empirical distribution function of the `ensemble'
of small area parameters, results are more sensitive to the failure of distributional assumptions.
AB - Hierarchical models are popular in many applied statistics fields including Small Area Estimation.
One well known model employed in this particular field is the Fay Herriot model, in
which unobservable parameters are assumed to be Gaussian. In Hierarchical models assumptions
about unobservable quantities are difficult to check. For a special case of the Fay Herriot
model, Sinharay and Stern [2003. Posterior predictive model checking in Hierarchical models.
J. Statist. Plann. Inference 111, 209 221] showed that violations of the assumptions about the
random effects are difficult to detect using posterior predictive checks. In this present paper
we consider two extensions of the Fay Herriot model in which the random effects are assumed
to be distributed according to either an exponential power (EP) distribution or a skewed EP
distribution. We aim to explore the robustness of the Fay Herriot model for the estimation
of individual area means as well as the empirical distribution function of their `ensemble'.
Our findings, which are based on a simulation experiment, are largely consistent with those
of Sinharay and Stern as far as the efficient estimation of individual small area parameters is
concerned. However, when estimating the empirical distribution function of the `ensemble'
of small area parameters, results are more sensitive to the failure of distributional assumptions.
KW - 'Ensemble' estimators
KW - Exponential power distribution
KW - Fay-Herriot model
KW - Skewed exponential power distribution
KW - 'Ensemble' estimators
KW - Exponential power distribution
KW - Fay-Herriot model
KW - Skewed exponential power distribution
UR - http://hdl.handle.net/10807/31586
UR - http://www.sciencedirect.com/science/article/pii/s0378375809002304
U2 - 10.1016/j.jspi.2009.07.022
DO - 10.1016/j.jspi.2009.07.022
M3 - Article
SN - 0378-3758
VL - 140
SP - 433
EP - 443
JO - Journal of Statistical Planning and Inference
JF - Journal of Statistical Planning and Inference
ER -