通过贝叶斯网络建模评估规则:一个实用的方法

F. Mangili, Giorgia Adorni, Alberto Piatti, Claudio Bonesana, Alessandro Antonucci
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引用次数: 1

摘要

学习者能力的自动评估是智能辅导系统的一项基本任务。评估标准通常有效地描述了相关的能力和能力水平。本文提出了一种直接从定义能力水平的某些(部分)排序的评估准则中推导学习者模型的方法。该模型基于贝叶斯网络,并利用具有不确定性的逻辑门(通常称为噪声门)来减少模型的参数数量,从而简化专家的提取,并允许在智能辅导系统中进行实时推理。我们说明了如何将该方法应用于为测试计算思维技能而开发的活动的自动化人类评估。从评估标题开始的模型的简单引出为快速自动化评估几个任务提供了可能性,使它们更容易在自适应评估工具和智能tntorino系统的上下文中被利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling Assessment Rubrics through Bayesian Networks: a Pragmatic Approach
Automatic assessment of learner competencies is a fundamental task in intelligent tutoring systems. An assessment rubric typically and effectively describes relevant competencies and competence levels. This paper presents an approach to deriving a learner model directly from an assessment rubric defining some (partial) ordering of competence levels. The model is based on Bayesian networks and exploits logical gates with uncertainty (often referred to as noisy gates) to reduce the number of parameters of the model, so to simplify their elicitation by experts and allow real-time inference in intelligent tutoring systems. We illustrate how the approach can be applied to automatize the human assessment of an activity developed for testing computational thinking skills. The simple elicitation of the model starting from the assessment rubric opens up the possibility of quickly automating the assessment of several tasks, making them more easily exploitable in the context of adaptive assessment tools and intelligent tntorino systems.
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