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Network Trees: A Method for Recursively Partitioning Covariance Structures
by
Zeileis, Achim
, Mair, Patrick
, Jones, Payton J.
, Simon, Thorsten
in
Algorithms
/ Assessment
/ Behavioral Science and Psychology
/ Correlation
/ Emotional Problems
/ Factor Analysis
/ Feedback (Response)
/ Humanities
/ Inferences
/ Law
/ Maximum Likelihood Statistics
/ Mental Disorders
/ Network Analysis
/ Nonparametric Statistics
/ Personality
/ Psychology
/ Psychometrics
/ Psychopathology
/ Quantitative psychology
/ Resilience (Psychology)
/ Simulation
/ Statistical Data
/ Statistical Theory and Methods
/ Statistics for Social Sciences
/ Structural Equation Models
/ Testing and Evaluation
/ Theory and Methods
2020
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Network Trees: A Method for Recursively Partitioning Covariance Structures
by
Zeileis, Achim
, Mair, Patrick
, Jones, Payton J.
, Simon, Thorsten
in
Algorithms
/ Assessment
/ Behavioral Science and Psychology
/ Correlation
/ Emotional Problems
/ Factor Analysis
/ Feedback (Response)
/ Humanities
/ Inferences
/ Law
/ Maximum Likelihood Statistics
/ Mental Disorders
/ Network Analysis
/ Nonparametric Statistics
/ Personality
/ Psychology
/ Psychometrics
/ Psychopathology
/ Quantitative psychology
/ Resilience (Psychology)
/ Simulation
/ Statistical Data
/ Statistical Theory and Methods
/ Statistics for Social Sciences
/ Structural Equation Models
/ Testing and Evaluation
/ Theory and Methods
2020
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Do you wish to request the book?
Network Trees: A Method for Recursively Partitioning Covariance Structures
by
Zeileis, Achim
, Mair, Patrick
, Jones, Payton J.
, Simon, Thorsten
in
Algorithms
/ Assessment
/ Behavioral Science and Psychology
/ Correlation
/ Emotional Problems
/ Factor Analysis
/ Feedback (Response)
/ Humanities
/ Inferences
/ Law
/ Maximum Likelihood Statistics
/ Mental Disorders
/ Network Analysis
/ Nonparametric Statistics
/ Personality
/ Psychology
/ Psychometrics
/ Psychopathology
/ Quantitative psychology
/ Resilience (Psychology)
/ Simulation
/ Statistical Data
/ Statistical Theory and Methods
/ Statistics for Social Sciences
/ Structural Equation Models
/ Testing and Evaluation
/ Theory and Methods
2020
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Network Trees: A Method for Recursively Partitioning Covariance Structures
Journal Article
Network Trees: A Method for Recursively Partitioning Covariance Structures
2020
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Overview
In many areas of psychology, correlation-based network approaches (i.e., psychometric networks) have become a popular tool. In this paper, we propose an approach that recursively splits the sample based on covariates in order to detect significant differences in the structure of the covariance or correlation matrix. Psychometric networks or other correlation-based models (e.g., factor models) can be subsequently estimated from the resultant splits. We adapt model-based recursive partitioning and conditional inference tree approaches for finding covariate splits in a recursive manner. The empirical power of these approaches is studied in several simulation conditions. Examples are given using real-life data from personality and clinical research.
Publisher
Springer US,Cambridge University Press
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