The goal of this paper is to introduce a new framework for fast and effective knowledge state assessments in the context of personalized, skill-based online learning. We use knowledge state networks - specific neural networks trained on assessment data of previous learners - to predict the full knowledge state of other learners from only partial information about their skills. In combination with a matching assessment strategy for asking discriminative questions we demonstrate that our approach leads to a significant speed-up of the assessment process - in terms of the necessary number of assessment questions - in comparison to standard assessment designs. In practice, the presented methods enable personalized, skill-based online learning also for skill ontologies of very fine granularity without deteriorating the associated learning experience by a lengthy assessment process.
翻译:本文件的目的是在个人化、以技能为基础的在线学习背景下引入一个快速有效的知识状态评估新框架,我们利用知识国家网络----受过前学员评估数据培训的具体神经网络----从有关其技能的部分信息中预测其他学习者的全部知识状态,与提出歧视性问题的匹配评估战略相结合,我们表明,从评估问题的必要数量来看,我们的方法与标准评估设计相比,大大加快了评估进程的速度。在实践中,所提出的方法使得个人化、基于技能的在线学习也能够用于非常精细的颗粒学技能,同时不会因长期评估进程而使相关学习经验恶化。