Psychometrics of an Elo-based large-scale online learning system

Hanke Vermeiren , Joost Kruis , Maria Bolsinova , Han L.J. van der Maas , Abe D. Hofman
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Abstract

The Elo rating system (ERS), an intuitive and computationally efficient algorithm, offers a means to effectively update estimates of item difficulties and learner abilities as they evolve. This method proves to be highly advantageous in online learning environments. Computerized adaptive practice (CAP) endeavors to present learners with items that are well-suited to their individual ability levels, with the ultimate goal of enhancing motivation and optimizing learning outcomes. The objective of this paper is to outline common challenges that arise in an Elo-based CAP system and to present the psychometric enhancements implemented in the Prowise Learn environments to address these concerns. More specifically, we focus on three main aspects; 1) the development of a new scoring rule balancing response time and accuracy, 2) a way to fix the item scale to deal with item drift, and 3) an improved adaptive K-factor algorithm to speed up convergence in estimation. Using data from the Prowise Learn environment, analyses were done to illustrate the effect of the enhancements. Results show that these enhancements result in more dynamic tracking of the ratings, solve the issue of item drift, and capture the speed-accuracy trade-off more accurately.
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基于elo的大规模在线学习系统的心理测量学
Elo评分系统(ERS)是一种直观且计算效率高的算法,它提供了一种有效更新项目难度和学习者能力评估的方法。这种方法被证明是非常有利的在线学习环境。计算机化自适应练习(CAP)致力于向学习者提供适合其个人能力水平的项目,其最终目标是增强动机和优化学习结果。本文的目的是概述在基于elo的CAP系统中出现的常见挑战,并介绍在Prowise Learn环境中实施的心理测量增强功能,以解决这些问题。更具体地说,我们主要关注三个方面;1)开发了一种新的评分规则,平衡了响应时间和准确性;2)一种固定项目尺度的方法来处理项目漂移;3)一种改进的自适应k因子算法来加快估计的收敛速度。使用来自Prowise Learn环境的数据,进行分析以说明增强的效果。结果表明,这些增强可以更动态地跟踪评分,解决项目漂移问题,并更准确地捕获速度-准确性之间的权衡。
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来源期刊
CiteScore
16.80
自引率
0.00%
发文量
66
审稿时长
50 days
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