Denon Arthur Richmond Gono, Bi Tra Goore, Yves Tiecoura, Kouamé Abel Assielou
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引用次数: 0
Abstract
Pedagogical models development requires several steps, one of which is the mapping of tasks and skills, also known as the educational items clustering. This activity of clustering educational items usually requires the participation of domain experts. However, discovering the exact skills involved in performing the tasks is a complex activity for them. This paper aims at solving the task and skill-mapping problem by proposing an approach based on the Weighted Multi-Relational Matrix Factoring technique to help experts in this task. This approach relies on two types of relationship, the “ student does task” relationship and the “student has skills” relationship through a latent factor model to reconstruct the “ task requires skill” relationship, the latter being the mapping between tasks and skills. An evaluation conducted on a group of two hundred (200) students in lower 6th class in a general secondary school (Côte d'Ivoire), showed that this approach brought an improvement rate of about 82.8% of the skill-task mapping proposed by the experts in the field. This result confirms that our approach not only allows us to map tasks and skills but also to significantly improve the updating of curricula.
教学模型的开发需要几个步骤,其中一个步骤是任务和技能的映射,也称为教育项目聚类。这种聚类教育项目的活动通常需要领域专家的参与。然而,发现执行任务所涉及的确切技能对他们来说是一项复杂的活动。本文提出了一种基于加权多关系矩阵分解技术的方法来帮助专家解决任务和技能映射问题。该方法依托“学生做任务”关系和“学生有技能”关系两类关系,通过潜在因素模型重构“任务需要技能”关系,后者即任务与技能之间的映射关系。对一所普通中学(Côte d' voivire)的200名6年级学生进行的一项评估表明,这种方法对该领域专家提出的技能任务映射的改进率约为82.8%。这一结果证实,我们的方法不仅可以让我们绘制任务和技能,还可以显著改善课程的更新。