Artículos de revistas
Split-Plot and Multi-Stratum Designs for Statistical Inference
Fecha
2017-01-01Registro en:
Technometrics. Alexandria: Amer Statistical Assoc, v. 59, n. 4, p. 446-457, 2017.
0040-1706
10.1080/00401706.2017.1316315
WOS:000418769600005
WOS000418769600005.pdf
Autor
Universidade Estadual Paulista (Unesp)
Kings Coll London
Institución
Resumen
It is increasingly recognized that many industrial and engineering experiments use split-plot or other multi-stratum structures. Much recent work has concentrated on finding optimum, or near-optimum, designs for estimating the fixed effects parameters in multi-stratum designs. However, often inference, such as hypothesis testing or interval estimation, will also be required and for inference to be unbiased in the presence of model uncertainty requires pure error estimates of the variance components. Most optimal designs provide few, if any, pure error degrees of freedom. Gilmour and Trinca (2012) introduced design optimality criteria for inference in the context of completely randomized and block designs. Here these criteria are used stratum-by-stratum to obtain multi-stratum designs. It is shown that these designs have better properties for performing inference than standard optimum designs. Compound criteria, which combine the inference criteria with traditional point estimation criteria, are also used and the designs obtained are shown to compromise between point estimation and inference. Designs are obtained for two real split-plot experiments and an illustrative split-split-plot structure. Supplementary materials for this article are available online.