Bolsinova Maria, Deonovic Benjamin, Arieli-Attali Meirav, Settles Burr, Hagiwara Masato, Maris Gunter
Tilburg University, Tilburg, Netherlands.
Corteva Agriscience, Johnston, IA, USA.
Appl Psychol Meas. 2022 May;46(3):219-235. doi: 10.1177/01466216221084208. Epub 2022 Apr 18.
Adaptive learning and assessment systems support learners in acquiring knowledge and skills in a particular domain. The learners' progress is monitored through them solving items matching their level and aiming at specific learning goals. Scaffolding and providing learners with hints are powerful tools in helping the learning process. One way of introducing hints is to make hint use the choice of the student. When the learner is certain of their response, they answer without hints, but if the learner is not certain or does not know how to approach the item they can request a hint. We develop measurement models for applications where such on-demand hints are available. Such models take into account that hint use may be informative of ability, but at the same time may be influenced by other individual characteristics. Two modeling strategies are considered: (1) The measurement model is based on a scoring rule for ability which includes both response accuracy and hint use. (2) The choice to use hints and response accuracy conditional on this choice are modeled jointly using Item Response Tree models. The properties of different models and their implications are discussed. An application to data from Duolingo, an adaptive language learning system, is presented. Here, the best model is the scoring-rule-based model with full credit for correct responses without hints, partial credit for correct responses with hints, and no credit for all incorrect responses. The second dimension in the model accounts for the individual differences in the tendency to use hints.
自适应学习与评估系统帮助学习者获取特定领域的知识和技能。通过让学习者解答与其水平相匹配且针对特定学习目标的题目来监测他们的进展。搭建支架并为学习者提供提示是促进学习过程的有力工具。引入提示的一种方式是让学生自行选择是否使用提示。当学习者确定自己的答案时,他们可以不使用提示进行回答,但如果学习者不确定或不知道如何解答题目,他们可以请求提示。我们为可提供此类按需提示的应用开发测量模型。此类模型考虑到使用提示可能既能反映能力,同时也可能受到其他个体特征的影响。我们考虑了两种建模策略:(1) 测量模型基于一种能力评分规则,该规则同时包含回答准确性和提示使用情况。(2) 使用提示的选择以及基于此选择的回答准确性通过项目反应树模型进行联合建模。我们讨论了不同模型的性质及其影响。本文展示了对自适应语言学习系统多邻国(Duolingo)的数据应用。在此,最佳模型是基于评分规则的模型,对于无提示的正确回答给予满分,对于有提示的正确回答给予部分分数,对于所有错误回答不给分。模型的第二个维度考虑了使用提示倾向方面的个体差异。