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Mixed modelling is now well established as a powerful approach to statistical data analysis. It is based on the recognition of random-effect terms in statistical models, leading to inferences and estimates that have much wider applicability and are more realistic than those otherwise obtained. Introduction to Mixed Modelling leads the reader into mixed modelling as a natural extension of two more familiar methods, regression analysis and analysis of variance. It provides practical guidance combined with a clear explanation of the underlying concepts. Like the first edition, this new edition shows diverse applications of mixed models, provides guidance on the identification of random-effect terms, and explains how to obtain and interpret best linear unbiased predictors (BLUPs). It also introduces several important new topics, including the following: (-) Use of the software SAS, in addition to GenStat and R. (-) Meta-analysis and the multiple testing problem. (-) The Bayesian interpretation of mixed models. Including numerous practical exercises with solutions, this book provides an ideal introduction to mixed modelling for final year undergraduate students, postgraduate students and professional researchers. It will appeal to readers from a wide range of scientific disciplines including statistics, biology, bioinformatics, medicine, agriculture, engineering, economics, archaeology and geography.
Multilevel models (Statistics) --- Experimental design. --- Regression analysis. --- Analysis of variance.
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Genstat (Computer system) --- Mathematical statistics --- Statistics --- Data processing --- Genstat [Programme d'ordinateur]. --- Mathematical statistics - Data processing. --- Statistics - Data processing. --- Genstat [Computerprogramma]. --- Mathematical statistics - Data processing --- Statistics - Data processing
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