Description
Blocking is often used to reduce known variability in designed experiments by collecting together homogeneous experimental units. Methods to find block designs for discrete data have recently been proposed by, amongst others, Woods and van de Ven (2011), Niaparast and Schwabe (2013) and Waite and Woods (2015). In Rappold et al. (2019), we found optimal designs under a marginal modelling approach when the intra-block dependence structure is defined via a copula. Defining dependence via a copula model has the advantages of providing a flexible dependence modelling separate to the marginal probability models, and a more interpretable approach to defining the degree of dependence. As is common, we used a pseudo-Bayesian approach for improved robustness. The motivating example is a design for aerospace materials testing experi- ments to assess thermal properties, and in particular probability of failure.Period | 25 Jun 2019 |
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Event title | mODa12 |
Event type | Conference |
Location | SlovakiaShow on map |
Fields of science
- 101018 Statistics
JKU Focus areas
- Digital Transformation
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Design of experiments
Project: Other › Project from scientific scope of research unit