Introduction to mixed modelling = be...
Galwey, N. W.

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  • Introduction to mixed modelling = beyond regression and analysis of variance /
  • 紀錄類型: 書目-電子資源 : Monograph/item
    正題名/作者: Introduction to mixed modelling/ N. W. Galwey.
    其他題名: beyond regression and analysis of variance /
    作者: Galwey, N. W.
    出版者: Chichester, West Sussex, United Kingdom :Wiley, : 2014.,
    面頁冊數: 1 online resource (504 p.) :ill.
    內容註: Cover; Title Page; Copyright; Contents; Preface; Chapter 1 The need for more than one random-effect term when fitting a regression line; 1.1 A data set with several observations of variable Y at each value of variable X; 1.2 Simple regression analysis: Use of the software GenStat to perform the analysis; 1.3 Regression analysis on the group means; 1.4 A regression model with a term for the groups; 1.5 Construction of the appropriate F test for the significance of the explanatory variable when groups are present; 1.6 The decision to specify a model term as random: A mixed model.
    內容註: 1.7 Comparison of the tests in a mixed model with a test of lack of fit1.8 The use of REsidual Maximum Likelihood (REML) to fit the mixed model; 1.9 Equivalence of the different analyses when the number of observations per group is constant; 1.10 Testing the assumptions of the analyses: Inspection of the residual values; 1.11 Use of the software R to perform the analyses; 1.12 Use of the software SAS to perform the analyses; 1.13 Fitting a mixed model using GenStat''s Graphical User Interface (GUI); 1.14 Summary; 1.15 Exercises; References.
    內容註: Chapter 2 The need for more than one random-effect term in a designed experiment2.1 The split plot design: A design with more than one random-effect term; 2.2 The analysis of variance of the split plot design: A random-effect term for the main plots; 2.3 Consequences of failure to recognize the main plots when analysing the split plot design; 2.4 The use of mixed modelling to analyse the split plot design; 2.5 A more conservative alternative to the F and Wald statistics; 2.6 Justification for regarding block effects as random.
    內容註: 2.7 Testing the assumptions of the analyses: Inspection of the residual values2.8 Use of R to perform the analyses; 2.9 Use of SAS to perform the analyses; 2.10 Summary; 2.11 Exercises; References; Chapter 3 Estimation of the variances of random-effect terms; 3.1 The need to estimate variance components; 3.2 A hierarchical random-effects model for a three-stage assay process; 3.3 The relationship between variance components and stratum mean squares; 3.4 Estimation of the variance components in the hierarchical random-effects model; 3.5 Design of an optimum strategy for future sampling.
    內容註: 3.6 Use of R to analyse the hierarchical three-stage assay process3.7 Use of SAS to analyse the hierarchical three-stage assay process; 3.8 Genetic variation: A crop field trial with an unbalanced design; 3.9 Production of a balanced experimental design by `padding'' with missing values; 3.10 Specification of a treatment term as a random-effect term: The use of mixed-model analysis to analyse an unbalanced data set; 3.11 Comparison of a variance component estimate with its standard error; 3.12 An alternative significance test for variance components; 3.13 Comparison among significance tests for variance components.
    標題: Multilevel models (Statistics) -
    電子資源: http://onlinelibrary.wiley.com/book/10.1002/9781118861769
    ISBN: 9781118861769
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W9270691 電子資源 11.線上閱覽_V 電子書 EB QA276 G33 2014 一般使用(Normal) 在架 0
  • 1 筆 • 頁數 1 •
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