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Uncertainty Diagnostics of Binomial Regression Trees for Ordered Rating Data
[journal article]
Abstract The paper proposes a method to perform diagnostics of model-based trees for preference and evaluation data on the basis of surrogate residual analysis for ordinal data models. The discussion stems from the introduction of binomial regression trees and discusses how to perform local diagnostics of mi... view more
The paper proposes a method to perform diagnostics of model-based trees for preference and evaluation data on the basis of surrogate residual analysis for ordinal data models. The discussion stems from the introduction of binomial regression trees and discusses how to perform local diagnostics of misspecification against alternative model extensions within the framework of mixture models with uncertainty. Three case studies concerning customer satisfaction and perceived trust for information sources illustrate usefulness and versatile applicative extent of the proposal.... view less
Keywords
ALLBUS; data; regression; model; diagnosis
Classification
Methods and Techniques of Data Collection and Data Analysis, Statistical Methods, Computer Methods
Free Keywords
ordered data; model-based trees; binomial regression; surrogate residuals; mixture models with uncertainty; German General Social Survey (ALLBUS) - Cumulation 1980-2014 (ZA4584 v1.0.0)
Document language
English
Publication Year
2023
Page/Pages
p. 79-105
Journal
Journal of Classification, 40 (2023) 1
DOI
https://doi.org/10.1007/s00357-022-09429-5
ISSN
1432-1343
Status
Published Version; peer reviewed