Giorgia Adorni, Francesca Mangili, Alberto Piatti, Claudio Bonesana, Alessandro Antonucci
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引用次数: 0
摘要
在现代个性化教育中,人们越来越关注培养学习者的能力并对其进行准确评估。在之前的工作中,我们提出了一种从特定任务的能力标准中推导出学习者模型的方法,用于自动技能评估,从而简化了自动评估工具的实施。然而,以前的方法有两个主要局限:(i) 评估标准所定义的能力之间的排序只是间接建模;(ii) 模型中没有包括不在评估范围内但完成任务所必需的辅助技能。在这项工作中,我们通过引入虚拟观察节点来解决第(i)点问题,在不改变网络结构的情况下严格执行技能排序。相反,针对问题(ii),我们设计了一个具有两层门的网络,一层通过噪声-OR 门进行非连接操作,另一层通过逻辑 AND 进行连接操作。这种改变提高了模型结果的一致性和建模工具的灵活性,同时又不影响模型的紧凑参数化、可解释性和简单的专家诱导。我们采用这种方法开发了用于计算思维(CT)技能评估的学习者模型。CT-立方体技能评估框架和交叉阵列任务(CAT)被用来示范和证明其可行性。
Rubric-based Learner Modelling via Noisy Gates Bayesian Networks for Computational Thinking Skills Assessment
In modern and personalised education, there is a growing interest in
developing learners' competencies and accurately assessing them. In a previous
work, we proposed a procedure for deriving a learner model for automatic skill
assessment from a task-specific competence rubric, thus simplifying the
implementation of automated assessment tools. The previous approach, however,
suffered two main limitations: (i) the ordering between competencies defined by
the assessment rubric was only indirectly modelled; (ii) supplementary skills,
not under assessment but necessary for accomplishing the task, were not
included in the model. In this work, we address issue (i) by introducing dummy
observed nodes, strictly enforcing the skills ordering without changing the
network's structure. In contrast, for point (ii), we design a network with two
layers of gates, one performing disjunctive operations by noisy-OR gates and
the other conjunctive operations through logical ANDs. Such changes improve the
model outcomes' coherence and the modelling tool's flexibility without
compromising the model's compact parametrisation, interpretability and simple
experts' elicitation. We used this approach to develop a learner model for
Computational Thinking (CT) skills assessment. The CT-cube skills assessment
framework and the Cross Array Task (CAT) are used to exemplify it and
demonstrate its feasibility.