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Uncovering Latent Knowledge: A Comparison of Two Algorithms

机译:发现潜在知识:两种算法的比较

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At the beginning of every course, it can be expected that several students have some syllabus knowledge. For efficiency in learning systems, and to combat student frustration and boredom, it is important to quickly uncover this latent knowledge. This enables students to begin new learning immediately. In this paper we compare two algorithms used to achieve this goal, both based on the theory of Knowledge Spaces. Simulated students were created with appropriate answering patterns based on predefined latent knowledge from a subsection of a real course. For each student, both algorithms were applied to compare their efficiency and their accuracy. We examine the trade-off between both sets of outcomes, and conclude with the merits and constraints of each algorithm.
机译:在每门课程的开始,可以预期几个学生都有一些课程提要知识。为了提高学习系统的效率,并消除学生的挫败感和无聊感,重要的是要迅速发现这种潜在的知识。这使学生能够立即开始新的学习。在本文中,我们基于知识空间的理论比较了用于实现该目标的两种算法。模拟学生是根据实际课程的一个子部分中预定义的潜在知识以适当的回答方式创建的。对于每个学生,两种算法都被应用来比较他们的效率和准确性。我们研究了两组结果之间的权衡,并得出了每种算法的优缺点。

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