Analyzing rating distributions with heaps and censoring points using the generalized Craggit model

In this article, we introduce a new, highly flexible model to analyze distributions with heaps and censoring points, which we call the generalized Craggit model. Distributions with heaps and censoring points can be found in many social science applications. For example, such distributions can be the...

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Main Authors: Volker Lang, Martin Groß
Format: Article
Language:English
Published: Elsevier 2020-01-01
Series:MethodsX
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S221501612030087X
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spelling doaj-f60f632d9c374bd1af6176cffd3fd4242021-01-02T05:10:18ZengElsevierMethodsX2215-01612020-01-017100868Analyzing rating distributions with heaps and censoring points using the generalized Craggit modelVolker Lang0Martin Groß1Faculty of Sociology, Bielefeld University, Bielefeld, Germany; Corresponding author.Institute of Sociology, Tübingen University, Tübingen, GermanyIn this article, we introduce a new, highly flexible model to analyze distributions with heaps and censoring points, which we call the generalized Craggit model. Distributions with heaps and censoring points can be found in many social science applications. For example, such distributions can be the result of sequential or multistep rating processes. Our model is a combination of a Craggit model and a generalized ordered probit model. It can account for multiple heaps and censoring points in distributions. We used this model to analyze a factorial survey experiment on earnings justice attitudes in the SOEP-Pretest 2008. In this experiment, a three-step rating instrument was used, which resulted in a rating distribution with heaps and censoring. Our generalized Craggit model fits the data of this experiment much better than a hierarchical linear model, which is the method that is usually implemented to analyze factorial survey experiments.http://www.sciencedirect.com/science/article/pii/S221501612030087XCensored dataHeaped dataCraggit modelStructural equation modelRating instrumentsResponse scales
collection DOAJ
language English
format Article
sources DOAJ
author Volker Lang
Martin Groß
spellingShingle Volker Lang
Martin Groß
Analyzing rating distributions with heaps and censoring points using the generalized Craggit model
MethodsX
Censored data
Heaped data
Craggit model
Structural equation model
Rating instruments
Response scales
author_facet Volker Lang
Martin Groß
author_sort Volker Lang
title Analyzing rating distributions with heaps and censoring points using the generalized Craggit model
title_short Analyzing rating distributions with heaps and censoring points using the generalized Craggit model
title_full Analyzing rating distributions with heaps and censoring points using the generalized Craggit model
title_fullStr Analyzing rating distributions with heaps and censoring points using the generalized Craggit model
title_full_unstemmed Analyzing rating distributions with heaps and censoring points using the generalized Craggit model
title_sort analyzing rating distributions with heaps and censoring points using the generalized craggit model
publisher Elsevier
series MethodsX
issn 2215-0161
publishDate 2020-01-01
description In this article, we introduce a new, highly flexible model to analyze distributions with heaps and censoring points, which we call the generalized Craggit model. Distributions with heaps and censoring points can be found in many social science applications. For example, such distributions can be the result of sequential or multistep rating processes. Our model is a combination of a Craggit model and a generalized ordered probit model. It can account for multiple heaps and censoring points in distributions. We used this model to analyze a factorial survey experiment on earnings justice attitudes in the SOEP-Pretest 2008. In this experiment, a three-step rating instrument was used, which resulted in a rating distribution with heaps and censoring. Our generalized Craggit model fits the data of this experiment much better than a hierarchical linear model, which is the method that is usually implemented to analyze factorial survey experiments.
topic Censored data
Heaped data
Craggit model
Structural equation model
Rating instruments
Response scales
url http://www.sciencedirect.com/science/article/pii/S221501612030087X
work_keys_str_mv AT volkerlang analyzingratingdistributionswithheapsandcensoringpointsusingthegeneralizedcraggitmodel
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