Optimality of type I orthogonal arrays for cross-over models with correlated errors
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Publication:1567516
DOI10.1016/S0378-3758(99)00182-2zbMath0976.62074MaRDI QIDQ1567516
Publication date: 8 January 2002
Published in: Journal of Statistical Planning and Inference (Search for Journal in Brave)
orthogonal arraysgeneralized least-squaresuniversal optimalitydependent observationscross-over designscarry-over effectsrepeated measurements designchange-over designs
Related Items (6)
Balanced residual treatment effects designs of first order for correlated observations ⋮ Crossover designs based on type I orthogonal arrays for a self and simple mixed carryover effects model with correlated errors ⋮ Efficient designs based on orthogonal arrays of type I and type II for experiments using units ordered over time or space ⋮ Optimality of type I orthogonal arrays for general interference model with correlated observa\-tions ⋮ The construction of nearly balanced and nearly strongly balanced uniform cross-over designs ⋮ Universal optimality of Patterson's crossover designs
Cites Work
- Optimal two-period repeated measurements designs
- Some families of optimal and efficient repeated measurements designs
- Optimality of balanced uniform repeated measurements designs
- Optimal design and refinement of the linear model with applications to repeated measurements designs
- \(H\)-symmetric optimal repeated measurements designs
- Optimal repeated measurements designs: The linear optimality equations
- Neighbour balanced block designs for correlated errors
- Recent Developments in Crossover Designs
- Cross-over designs for two treatments and correlated errors
- Variance-balanced change-over designs for dependent observations
- Optimal and Efficient Repeated-Measurements Designs for Uncorrelated Observations
- Balanced repeated measurements designs
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