A Bayesian Active Learning Approach to Comparative Judgement
Andy Gray, Alma Rahat, Tom Crick, and Stephen Lindsay

TL;DR
This paper introduces a Bayesian active learning method for comparative judgement that improves transparency, efficiency, and accuracy in ranking assessments, addressing limitations of traditional methods and random pair selection.
Contribution
It presents a novel Bayesian approach to comparative judgement combined with an active learning strategy for pair selection, enhancing reliability and interpretability.
Findings
BCJ outperforms existing methods in accuracy.
More comparisons lead to better ranking accuracy.
The approach provides transparent decision insights.
Abstract
Assessment is a crucial part of education. Traditional marking is a source of inconsistencies and unconscious bias, placing a high cognitive load on the assessors. An approach to address these issues is comparative judgement (CJ). In CJ, the assessor is presented with a pair of items and is asked to select the better one. Following a series of comparisons, a rank is derived using a ranking model, for example, the BTM, based on the results. While CJ is considered a reliable method for marking, there are concerns around transparency, and the ideal number of pairwise comparisons to generate a reliable estimation of the rank order is not known. Additionally, there have been attempts to generate a method of selecting pairs that should be compared next in an informative manner, but some existing methods are known to have created their own bias within results inflating the reliability metric…
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Taxonomy
TopicsMachine Learning and Algorithms · Educational Assessment and Pedagogy
