Guardado en:
Detalles Bibliográficos
Autores principales: Moons, Filip, Vandervieren, Ellen
Formato: Preprint
Publicado: 2023
Materias:
Acceso en línea:https://arxiv.org/abs/2303.12502
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
_version_ 1866916956653748224
author Moons, Filip
Vandervieren, Ellen
author_facet Moons, Filip
Vandervieren, Ellen
contents Cohen's and Fleiss' kappa are well-known measures of inter-rater agreement, but they restrict each rater to selecting only one category per subject. This limitation is consequential in contexts where subjects may belong to multiple categories, such as psychiatric diagnoses involving multiple disorders or classifying interview snippets into multiple codes of a codebook. We propose a generalized version of Fleiss' kappa, which accommodates multiple raters assigning subjects to one or more nominal categories. Our proposed $κ$ statistic can incorporate category weights based on their importance and account for hierarchical category structures, such as primary disorders with sub-disorders. The new $κ$ statistic can also manage missing data and variations in the number of raters per subject or category. We review existing methods that allow for multiple category assignments and detail the derivation of our measure, proving its equivalence to Fleiss' kappa when raters select a single category per subject. The paper discusses the assumptions, premises, and potential paradoxes of the new measure, as well as the range of possible values and guidelines for interpretation. The measure was developed to investigate the reliability of a new mathematics assessment method, of which an example is elaborated. The paper concludes with a worked-out example of psychiatrists diagnosing patients with multiple disorders. All calculations are provided as R script and an Excel sheet to facilitate access to the new $κ$ tatistic.
format Preprint
id arxiv_https___arxiv_org_abs_2303_12502
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Measuring agreement among several raters classifying subjects into one or more (hierarchical) categories: A generalization of Fleiss' kappa
Moons, Filip
Vandervieren, Ellen
Methodology
Statistics Theory
62-02
Cohen's and Fleiss' kappa are well-known measures of inter-rater agreement, but they restrict each rater to selecting only one category per subject. This limitation is consequential in contexts where subjects may belong to multiple categories, such as psychiatric diagnoses involving multiple disorders or classifying interview snippets into multiple codes of a codebook. We propose a generalized version of Fleiss' kappa, which accommodates multiple raters assigning subjects to one or more nominal categories. Our proposed $κ$ statistic can incorporate category weights based on their importance and account for hierarchical category structures, such as primary disorders with sub-disorders. The new $κ$ statistic can also manage missing data and variations in the number of raters per subject or category. We review existing methods that allow for multiple category assignments and detail the derivation of our measure, proving its equivalence to Fleiss' kappa when raters select a single category per subject. The paper discusses the assumptions, premises, and potential paradoxes of the new measure, as well as the range of possible values and guidelines for interpretation. The measure was developed to investigate the reliability of a new mathematics assessment method, of which an example is elaborated. The paper concludes with a worked-out example of psychiatrists diagnosing patients with multiple disorders. All calculations are provided as R script and an Excel sheet to facilitate access to the new $κ$ tatistic.
title Measuring agreement among several raters classifying subjects into one or more (hierarchical) categories: A generalization of Fleiss' kappa
topic Methodology
Statistics Theory
62-02
url https://arxiv.org/abs/2303.12502