Decomposition tables for experiments. I: A chain of randomizations
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Publication:1043728
DOI10.1214/09-AOS717zbMath1191.62139arXiv0911.4027MaRDI QIDQ1043728
Publication date: 9 December 2009
Published in: The Annals of Statistics (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/0911.4027
tablesdesign of experimentsanalysis of varianceorthogonal decompositionefficiency factorstructuremultiphase experimentsmultitiered experimentstierbalancedecomposition tablepseudofactor
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Randomization-based models for multitiered experiments. I: A chain of randomizations ⋮ Decomposition tables for experiments. II: Two-one randomizations ⋮ Quasi-Latin designs ⋮ Formulating mixed models for experiments, including longitudinal experiments ⋮ Multiphase experiments with at least one later laboratory phase. I: Orthogonal designs ⋮ Complete Lie algebras ⋮ Multiphase experiments with at least one later laboratory phase. II. Nonorthogonal designs
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Cites Work
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