06087nam 2200649 a 450 991014147240332120240516163531.01-118-39176-41-118-39177-21-283-97796-61-118-39174-8(CKB)2670000000327898(EBL)918213(OCoLC)826853571(SSID)ssj0000820045(PQKBManifestationID)11459498(PQKBTitleCode)TC0000820045(PQKBWorkID)10856266(PQKB)10066404(OCoLC)825767800(MiAaPQ)EBC918213(Au-PeEL)EBL918213(CaPaEBR)ebr10648815(CaONFJC)MIL429046(EXLCZ)99267000000032789820120306d2013 ub 0engur|n|---|||||txtccrLog-linear modeling concepts, interpretation, and application /Alexander von Eye, Eun-Young Mun1st ed.Hoboken, N.J. Wiley20131 online resource (468 p.)Description based upon print version of record.1-118-14640-9 Includes bibliographical references and indexes.Cover; Title Page; Copyright Page; CONTENTS; Preface; Acknowledgments; 1 Basics of Hierarchical Log-linear Models; 1.1 Scaling: Which Variables Are Considered Categorical?; 1.2 Crossing Two or More Variables; 1.3 Goodman's Three Elementary Views of Log-linear Modeling; 1.4 Assumptions Made for Log-linear Modeling; 2 Effects in a Table; 2.1 The Null Model; 2.2 The Row Effects-Only Model; 2.3 The Column Effects-Only Model; 2.4 The Row- and Column-Effects Model; 2.5 Log-Linear Models; 3 Goodness-of-Fit; 3.1 Goodness-of-Fit I: Overall Fit Statistics; 3.1.1 Selecting between X2 and G23.1.2 Degrees of Freedom3.2 Goodness-of-Fit II: R2 Equivalents and Information Criteria; 3.2.1 R2 Equivalents; 3.2.2 Information Criteria; 3.3 Goodness-of-Fit III: Null Hypotheses Concerning Parameters; 3.4 Goodness-of-fit IV: Residual Analysis; 3.4.1 Overall Goodness-of-Fit Measures and Residuals; 3.4.2 Other Residual Measures; 3.4.3 Comparing Residual Measures; 3.4.4 A Procedure to Identify Extreme Cells; 3.4.5 Distributions of Residuals; 3.5 The Relationship between Pearson's X2 and Log-linear Modeling; 4 Hierarchical Log-linear Models and Odds Ratio Analysis6.1.2 Poisson Models6.1.3 GLM for Continuous Outcome Variables; 6.2 Design Matrices: Coding; 6.2.1 Dummy Coding; 6.2.2 Effect Coding; 6.2.3 Orthogonality of Vectors in Log-linear Design Matrices; 6.2.4 Design Matrices and Degrees of Freedom; 7 Parameter Interpretation and Significance Tests; 7.1 Parameter Interpretation Based on Design Matrices; 7.2 The Two Sources of Parameter Correlation: Dependency of Vectors and Data Characteristics; 7.3 Can Main Effects Be Interpreted?; 7.3.1 Parameter Interpretation in Main Effect Models; 7.3.2 Parameter Interpretation in Models with Interactions7.4 Interpretation of Higher Order Interactions8 Computations II: Design Matrices and Poisson GLM; 8.1 GLM-Based Log-linear Modeling in R; 8.2 Design Matrices in SYSTAT; 8.3 Log-linear Modeling with Design Matrices in lEM; 8.3.1 The Hierarchical Log-linear Modeling Option in lEM; 8.3.2 Using lEM'S Command cov to Specify Hierarchical Log-linear Models; 8.3.3 Using lEM'S Command fac to Specify Hierarchical Log-linear Models; 9 Nonhierarchical and Nonstandard Log-linear Models; 9.1 Defining Nonhierarchical and Nonstandard Log-linear Models9.2 Virtues of Nonhierarchical and Nonstandard Log-linear Models"Over the past ten years, there have been many important advances in log-linear modeling, including the specification of new models, in particular non-standard models, and their relationships to methods such as Rasch modeling. While most literature on the topic is contained in volumes aimed at advanced statisticians, Applied Log-Linear Modeling presents the topic in an accessible style that is customized for applied researchers who utilize log-linear modeling in the social sciences. The book begins by providing readers with a foundation on the basics of log-linear modeling, introducing decomposing effects in cross-tabulations and goodness-of-fit tests. Popular hierarchical log-linear models are illustrated using empirical data examples, and odds ratio analysis is discussed as an interesting method of analysis of cross-tabulations. Next, readers are introduced to the design matrix approach to log-linear modeling, presenting various forms of coding (effects coding, dummy coding, Helmert contrasts etc.) and the characteristics of design matrices. The book goes on to explore non-hierarchical and nonstandard log-linear models, outlining ten nonstandard log-linear models (including nonstandard nested models, models with quantitative factors, logit models, and log-linear Rasch models) as well as special topics and applications. A brief discussion of sampling schemes is also provided along with a selection of useful methods of chi-square decomposition. Additional topics of coverage include models of marginal homogeneity, rater agreement, methods to test hypotheses about differences in associations across subgroup, the relationship between log-linear modeling to logistic regression, and reduced designs. Throughout the book, Computer Applications chapters feature SYSTAT, Lem, and R illustrations of the previous chapter's material, utilizing empirical data examples to demonstrate the relevance of the topics in modern research"--Provided by publisher.Log-linear modelsLog-linear models.519.5/36MAT029000bisacshEye Alexander von148929Mun Eun Young920605MiAaPQMiAaPQMiAaPQBOOK9910141472403321Log-linear modeling2064791UNINA