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Dependent Data in Social Sciences Research

Edited by Mark Stemmler (), Wolfgang Wiedermann () and Francis L. Huang ()

in Springer Books from Springer

Date: 2024
Edition: 2nd ed. 2024
ISBN: 978-3-031-56318-8
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Chapters in this book:

Ch Chapter 1 Continuous Time Modeling in the Social Sciences: History and Philosophical Background
Johan H. L. Oud
Ch Chapter 10 Exploration of Dependence Structures in Longitudinal Categorical Data with Ordinal Responses
Li Wang, Shu-Min Liao and Daeyoung Kim
Ch Chapter 11 Bayesian Network for Discovering the Potential Causal Structure in Observational Data
Cody S. Ding
Ch Chapter 12 Missing Data in the Analysis of Multilevel and Dependent Data
Simon Grund, Oliver Lüdtke and Alexander Robitzsch
Ch Chapter 13 Bootstrap Methods for Robust Multilevel Analysis
Yichi Zhang, Winnie Wing-Yee Tse and Mark H. C. Lai
Ch Chapter 14 Investigating the Use of Robust Standard Errors to Account for Two-Way Clustering in Cross-Classified Data Structures
Bixi Zhang and Francis L. Huang
Ch Chapter 15 Self-Normalized, Score-Based Tests of Parameter Heterogeneity in Mixed Models
Ting Wang and Edgar C. Merkle
Ch Chapter 16 Statistical Power in Cross-Sectional Multilevel Experiments in Education
Spyros Konstantopoulos, Wei Li and Bixi Zhang
Ch Chapter 17 Exploring Temporal Pattern of Intergenerational Educational Mobility in Germany: An Application of Configural Frequency Analysis Using Weighted Prediction
Jörg-Henrik Heine, Florian G. Hartmann and Christian Tarnai
Ch Chapter 18 Configural Frequency Analysis Under Multinormality
Alexander von Eye and Wolfgang Wiedermann
Ch Chapter 19 Configural Frequency Analysis Under Multinormality in Incomplete Tables
Alexander von Eye and Wolfgang Wiedermann
Ch Chapter 2 Time in Latent Growth Curve Models
Matt L. Miller and Paolo Ghisletta
Ch Chapter 20 Higher-Order Configural Frequency Analysis of Groups of Variables: Dependencies in Test Data
Alexander von Eye and Wolfgang Wiedermann
Ch Chapter 21 Visualization of Dependence in Multidimensional Contingency Tables with an Ordinal Dependent Variable via Copula Regression
Shu-Min Liao, Li Wang and Daeyoung Kim
Ch Chapter 22 Mental Health Symptom Profiles Over Time: A Three-Step Latent Transition Cognitive Diagnosis Modeling Analysis with Covariates
Qianru Liang, Jimmy de la Torre, Mary E. Larimer and Eun-Young Mun
Ch Chapter 23 Multiple Imputation of Longitudinal Data: A Comparison of Robust Imputation Methods Regarding Sample Size Requirements, with an Application to Corporal Punishment Data
Kristian Kleinke, Markus Fritsch, Mark Stemmler and Friedrich Lösel
Ch Chapter 24 Multiple Imputation of Incomplete Panel Data Based on a Piecewise Growth Curve Model: An Evaluation and Application to Juvenile Delinquency Data
Kristian Kleinke and Jost Reinecke
Ch Chapter 25 Impact of Inconsistent Imputation Models in Mediation Analysis with Clustered Data
Bo Ye, Recai Yucel and Donna L. Coffman
Ch Chapter 26 Ecological Momentary Assessment (EMA) Designs with Planned Missingness
Diane Losardo, Sy-Miin Chow, A. T. Panter, Melissa Burkley and Edward Burkley
Ch Chapter 27 Variants of Estimating an IRT-Based Actor-Partner Interdependence Model (APIM) with R
Rainer W. Alexandrowicz, Linda Maurer, Anna Schultz and Marcus Mund
Ch Chapter 28 Assessing Individual Change: A Comparison of Reliable Change Indices Based on Classical Test Theory and Various Item Response Theory Models
Ferdinand Keller and Rainer W. Alexandrowicz
Ch Chapter 29 Assessing Unobserved Within-Group Individual Differences
Hoben Thomas
Ch Chapter 3 Score-Guided Recursive Partitioning of Continuous-Time Structural Equation Models
Manuel Arnold, Pablo F. Cáncer, Eduardo Estrada and Manuel C. Voelkle
Ch Chapter 4 Studying the Interaction Between Harsh Parenting and the Child’s Social Behavior Problems over Time Using Continuous Time Modeling
Mark Stemmler and Friedrich Lösel
Ch Chapter 5 A Variational Approach to Continuous Time Dynamic Models
Hannes Meinlschmidt, Meike Sons and Mark Stemmler
Ch Chapter 6 Finite Mixture Models for an Underlying Beta Distribution with an Application to COVID-19 Data
Cédric Noel and Jang Schiltz
Ch Chapter 7 What the Fuzz!? Leveraging Ambiguity in Dynamic Network Models
Jonathan J. Park, Sy-Miin Chow and Peter C. M. Molenaar
Ch Chapter 8 Causal Discovery with Hidden Variables Based on Non-Gaussianity and Nonlinearity
Takashi Nicholas Maeda, Yan Zeng and Shohei Shimizu
Ch Chapter 9 Direction of Dependence in Non-linear Models via Linearization
Wolfgang Wiedermann and Bixi Zhang

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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprbok:978-3-031-56318-8

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DOI: 10.1007/978-3-031-56318-8

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