University of Minnesota, Minneapolis, MN, USA.
2312E Miller Hall, Measurement and Statistics, College of Education, University of Washington, 2012 Skagit Ln, Seattle, WA, 98105, USA.
Behav Res Methods. 2023 Sep;55(6):3260-3280. doi: 10.3758/s13428-022-01953-x. Epub 2022 Sep 9.
Online learning systems are able to offer customized content catered to individual learner's needs, and have seen growing interest from industry and academia alike in recent years. In contrast to the traditional computerized adaptive testing setting, which has a well-calibrated item bank with new items added periodically, the online learning system has two unique features: (1) the number of items is large, and they have likely not gone through costly field testing for item calibration; and (2) the individual's ability may change as a result of learning. The Elo rating system has been recognized as an effective method for fast updating of item and person parameters in online learning systems to enable personalized learning. However, the updating parameter in Elo has to be tuned post hoc, and Elo is only suitable for the Rasch model. In this paper, we propose the use of a moment-matching Bayesian update algorithm to estimate item and person parameters on the fly. With sequentially updated item and person parameters, a modified maximum posterior weighted information criterion (MPWI) is proposed to adaptively assign items to individuals. The Bayesian updated algorithm along with MPWI is validated in a simulated multiple-session online learning setting, and the results show that the new combo can achieve fast and reasonably accurate parameter estimations that are comparable to random selection, match-difficulty selection, and traditional online calibration. Moreover, the combo can still function reasonably well with as low as 20% of items being pre-calibrated in the item bank.
在线学习系统能够提供针对个体学习者需求的定制化内容,近年来受到了业界和学术界的广泛关注。与传统的计算机化自适应测试环境不同,后者有经过精心校准的题库,并定期添加新的题目,在线学习系统具有两个独特的特点:(1)题目的数量很大,而且可能没有经过昂贵的现场测试来进行项目校准;(2)个人的能力可能会因为学习而发生变化。Elo 评分系统已被公认为一种在在线学习系统中快速更新项目和人员参数以实现个性化学习的有效方法。然而,Elo 的更新参数需要事后调整,并且 Elo 仅适用于 Rasch 模型。在本文中,我们提出使用矩匹配贝叶斯更新算法来实时估计项目和人员参数。通过顺序更新的项目和人员参数,提出了一种修改的最大后验加权信息准则(MPWI),以自适应地为个体分配项目。在模拟的多轮在线学习环境中验证了贝叶斯更新算法和 MPWI,结果表明,新的组合可以实现快速且相当准确的参数估计,与随机选择、匹配难度选择和传统的在线校准相当。此外,该组合在项目库中仅预校准 20%的项目的情况下仍能合理地发挥作用。