Department of Methodology and Statistics, Tilburg University, Tilburg.
Department of Information and Computing Sciences, Utrecht University, Utrecht, The Netherlands.
Br J Math Stat Psychol. 2022 Nov;75(3):753-778. doi: 10.1111/bmsp.12276. Epub 2022 Jun 5.
Recently, the Urnings algorithm (Bolsinova et al., 2022, J. R. Stat. Soc. Ser. C Appl. Statistics, 71, 91) has been proposed that allows for tracking the development of abilities of the learners and the difficulties of the items in adaptive learning systems. It is a simple and scalable algorithm which is suited for large-scale applications in which large streams of data are coming into the system and on-the-fly updating is needed. Compared to alternatives like the Elo rating system and its extensions, the Urnings rating system allows the uncertainty of the ratings to be evaluated and accounts for adaptive item selection which, if not corrected for, may distort the ratings. In this paper we extend the Urnings algorithm to allow for both between-item and within-item multidimensionality. This allows for tracking the development of interrelated abilities both at the individual and the population level. We present formal derivations of the multidimensional Urnings algorithm, illustrate its properties in simulations, and present an application to data from an adaptive learning system for primary school mathematics called Math Garden.
最近,Urnings 算法(Bolsinova 等人,2022,J. R. Stat. Soc. Ser. C Appl. Statistics,71,91)被提出,它允许跟踪学习者能力的发展和自适应学习系统中项目的难度。这是一个简单且可扩展的算法,适用于大规模应用,其中大量数据流进入系统,需要实时更新。与 Elo 评级系统及其扩展等替代方案相比,Urnings 评级系统允许评估评级的不确定性,并考虑自适应项目选择,如果不进行纠正,可能会扭曲评级。在本文中,我们将 Urnings 算法扩展到允许项目间和项目内的多维性。这允许在个体和群体水平上跟踪相关能力的发展。我们给出了多维 Urnings 算法的正式推导,在模拟中展示了它的性质,并将其应用于一个名为 Math Garden 的小学数学自适应学习系统的数据。