Use of mixed models is advocated almost ubiquitously when regression analysis is applied in data sets that contain multiple measurements in individual sampling units that lead to intercorrelation amongst the residuals. Using two examples, simulation studies were undertaken comparing models that contained fixed effects only with mixed models in which random effects identified the sampling units within the data set. Both approaches resulted in unbiased estimates of the parameters. The choice of a suitable parameterization for the mixed model proved difficult. It was found that use of either an appropriate mixed model or a lesser-known method (‘adjusted ordinary least squares regression’) to fit models with fixed effects only could yield unbiased estimates of the standard errors of the parameter estimates. However, difficulties remain with computational methods in both cases and it cannot be assumed, a priori, that either approach is necessarily superior to the other for any particular data set.
History
Publication title
Journal of Statistical Computation and Simulation
Pagination
1-20
ISSN
0094-9655
Department/School
Tasmanian Institute of Agriculture (TIA)
Publisher
Taylor & Francis Ltd
Place of publication
4 Park Square, Milton Park, Abingdon, England, Oxon, Ox14 4Rn