向改进知识追溯迈出了一步

Aayesha Zia, Jalal Nouri, M. Afzaal, Yongchao Wu, Xiu Li, Rebecka Weegar
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引用次数: 1

摘要

学习分析和人工智能的进步已经显示出改变传统教育模式的潜力。其中一个进步涉及到使用教育数据来跟踪学生的知识状态。在教育中的人工智能领域,知识追踪是一个成熟的领域,在这个领域中,机器在学生与课程作业互动时对他们的知识进行建模。学生知识的有效建模可以对适应性学习的提供产生很大的影响。事实上,最近对知识追踪的研究正在加强,特别关注利用新的机器学习算法来模拟学生的知识水平,并预测学生在未来任务和评估问题中的表现[10]。在问题级评估的情况下,知识追踪提供了对学习者当前知识水平的解释,并模拟了他们对与未来问题相关的技能或知识组成部分的掌握程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A step towards Improving Knowledge Tracing
The advancements in learning analytics and artificial intelligence have shown potential to transform traditional modalities of education. One such advancement relates to the use of educational data to track students’ knowledge state [1] . In the field of Artificial Intelligence in Education knowledge tracing is a well-established area where a machine models the students’ knowledge as they interact with coursework. Effective modeling of student knowledge can have a high impact on the provision of adaptive learning. In fact, lately, research on knowledge tracing is intensifying with a particular focus on the utilisation of new machine learning algorithms for modelling the students’ knowledge levels and for the prediction of performance on future tasks and assessment questions [2] . In the case of question-level assessment, knowledge tracing provides an interpretation of the learner’s current knowledge level and models their mastery of the skill or knowledge component to which future questions are related [3] .
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