Evaluating multidimensional extensions of the Elo rating systems for tracking ability in online learning environments

  • Hanke Vremeiren*
  • , Abe D. Hofman
  • , Maria Bolsinova
  • *Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference contributionScientificpeer-review

Abstract

The traditional Elo rating system (ERS), widely used as a student model in adaptive learning systems, assumes unidimensionality (i.e., all items measure a single ability or skill), limiting its ability to handle multidimensional data common in educational contexts. In response, several multidimensional extensions of the Elo rating system have been proposed, yet their measurement properties remain underexplored. This paper presents a comparative analysis of two such multidimensional extensions specifically designed to address within-item dimensionality: the multidimensional extension of the ERS (MERS) by Park et al. (2019) and the Multi-Concept Multivariate Elo-based Learner model (MELO) introduced by Abdi et al. (2019). While both these systems assume a compensatory multidimensional item response theory model underlying student responses, they propose different ways of updating the model parameters. We evaluate these algorithms in a simulation study using key performance metrics, including prediction accuracy, speed of convergence, bias, and variance of the ratings. Our results demonstrate that both multidimensional extensions outperform the unidimensional Elo rating system when the underlying data is multidimensional, highlighting the importance of considering multidimensional approaches to better capture the complexities inherent to the data. Furthermore, our results demonstrate that while the MELO algorithm is converging faster, it exhibits significant bias and lower prediction accuracy compared to the MERS. In addition, the MERS's robustness to misspecifications of the Q-matrix and its weights gives it an edge in situations where generating an accurate Q-matrix is challenging.
Original languageEnglish
Title of host publicationProceedings of the 18th international conference on educational data mining
EditorsCaitlin Mills, Giora Alexandron, Davide Taibi, Giosuè Lo Bosco, Luc Paquette
PublisherInternational Educational Data Mining Society
Pages143-154
Number of pages12
ISBN (Print)978-1-7336736-6-2.
DOIs
Publication statusPublished - Jul 2025
Event Educational Data Mining Conference 2025
- Palermo, Italy
Duration: 20 Jul 202523 Jul 2025
Conference number: 18

Conference

Conference Educational Data Mining Conference 2025
Country/TerritoryItaly
CityPalermo
Period20/07/2523/07/25

Keywords

  • Multidimensionality
  • Student modeling
  • Elo Rating System
  • Online Education

Fingerprint

Dive into the research topics of 'Evaluating multidimensional extensions of the Elo rating systems for tracking ability in online learning environments'. Together they form a unique fingerprint.

Cite this