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A Knowledge Graph Enhanced Learner Model to Predict Outcomes to Questions in the Medical Field

机译:一个知识图形增强了学习者模型,以预测医学领域的问题

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The training curriculum for medical doctors requires the intensive and rapid assimilation of a lot of knowledge. To help medical students optimize their learning path, the SIDES 3.0 national French project aims to extend an existing platform with intelligent learning services. This platform contains a large number of annotated learning resources, from training and evaluation questions to students' learning traces, available as an RDF knowledge graph. In order for the platform to provide personalized learning services, the knowledge and skills progressively acquired by students on each subject should be taken into account when choosing the training and evaluation questions to be presented to them, in the form of customized quizzes. To achieve such recommendation, a first step lies in the ability to predict the outcome of students when answering questions (success or failure). With this objective in mind, in this paper we propose a model of the students' learning on the SIDES platform, able to make such predictions. The model extends a state-of-the-art approach to fit the specificity of medical data, and to take into account additional knowledge extracted from the OntoSIDES knowledge graph in the form of graph embeddings. Through an evaluation based on learning traces for pediatrics and cardiovascular specialties, we show that considering the vector representations of answers, questions and students nodes substantially improves the prediction results compared to baseline models.
机译:医生的培训课程需要深入和快速同化许多知识。为了帮助医学学生优化他们的学习路径,方面的3.0国家法国项目旨在扩展现有平台,智能学习服务。该平台包含大量注释的学习资源,从培训和评估问题到学生的学习迹线,可作为RDF知识图表提供。为了使平台提供个性化学习服务,在选择培训和评估问题时,应考虑到每个主题的学生逐步获取的知识和技能,以定制测验的形式。为了实现这些推荐,第一步是在回答问题时预测学生的结果(成功或失败)。凭借这一目标,在本文中,我们提出了一个模型在侧面平台上学习,能够做出这种预测。该模型扩展了最先进的方法来符合医疗数据的特殊性,并考虑以图形嵌入的形式从持有的知识图中提取的额外知识。通过基于学习痕迹的评估,用于儿科和心血管专长,我们表明,考虑到答案的矢量表示,问题和学生节点基本上改善了与基线模型相比的预测结果。

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