Systematic Comparison of Two Approaches for Evaluating and Using Rater-Mediated Performance Assessments

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Bibliographic Details
Title: Systematic Comparison of Two Approaches for Evaluating and Using Rater-Mediated Performance Assessments
Language: English
Authors: Chunling Niu (ORCID 0000-0002-9106-0417), Kelly Bradley (ORCID 0000-0002-4682-8212), Rui Jin (ORCID 0000-0001-5363-454X), Ashley Love (ORCID 0000-0002-4024-796X)
Source: Practical Assessment, Research & Evaluation. 2025 30(1).
Availability: University of Massachusetts Amherst Libraries. 154 Hicks Way, Amherst, MA 01003. e-mail: pare@umass.edu; Web site: https://openpublishing.library.umass.edu/pare/
Peer Reviewed: Y
Page Count: 37
Publication Date: 2025
Document Type: Journal Articles
Reports - Research
Descriptors: Evaluation Methods, Interrater Reliability, Test Bias, Research Problems, Performance Based Assessment, Scoring Rubrics, Factor Analysis, Error of Measurement, Evaluators
ISSN: 1531-7714
Abstract: Rater-mediated performance assessments (RMPAs) involve third-party raters evaluating individual performance and are increasingly used across educational, organizational, and research contexts. However, challenges persist in accounting for rater bias and measurement errors, as well as addressing concerns around equity and fairness, especially for historically marginalized populations. This paper addresses these challenges by first discussing the methodological limitations of widely used RMPA evaluation techniques based on classical test theory (CTT), including factor analysis, Cronbach's alpha, and interrater reliability analysis. An alternative approach using Many-Facet Rasch Modeling (MFRM) is then introduced. The two frameworks are systematically compared from both theoretical and empirical perspectives. An empirical example using AI safety evaluation data from the DICES dataset demonstrates how MFRM yields enhanced diagnostic insights (including rater severity differences, rating scale functioning issues, and construct dimensionality) that CTT approaches may not readily provide. Finally, commonly used MFRM-based analytical techniques are introduced for typical RMPA evaluation studies. This paper not only aims to enhance the methodological rigor of RMPAs but also seeks to contribute to the ongoing dialogues on creating more equitable and fair performance assessment practices.
Abstractor: As Provided
Notes: https://github.com/google-research-datasets/dices-dataset
Entry Date: 2026
Accession Number: EJ1495672
Database: ERIC
Description
Abstract:Rater-mediated performance assessments (RMPAs) involve third-party raters evaluating individual performance and are increasingly used across educational, organizational, and research contexts. However, challenges persist in accounting for rater bias and measurement errors, as well as addressing concerns around equity and fairness, especially for historically marginalized populations. This paper addresses these challenges by first discussing the methodological limitations of widely used RMPA evaluation techniques based on classical test theory (CTT), including factor analysis, Cronbach's alpha, and interrater reliability analysis. An alternative approach using Many-Facet Rasch Modeling (MFRM) is then introduced. The two frameworks are systematically compared from both theoretical and empirical perspectives. An empirical example using AI safety evaluation data from the DICES dataset demonstrates how MFRM yields enhanced diagnostic insights (including rater severity differences, rating scale functioning issues, and construct dimensionality) that CTT approaches may not readily provide. Finally, commonly used MFRM-based analytical techniques are introduced for typical RMPA evaluation studies. This paper not only aims to enhance the methodological rigor of RMPAs but also seeks to contribute to the ongoing dialogues on creating more equitable and fair performance assessment practices.
ISSN:1531-7714