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Analysing Problem Sequencing Strategies Based on Revised Bloom's Taxonomy Using Deep Knowledge Tracing

机译:使用深度知识跟踪分析基于经修订的Bloom分类法的问题排序策略

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Revised Bloom's Taxonomy (RBT) is hierarchical in nature and it serves as a common vocabulary for the teachers to classify learning objectives of a curriculum. In this work, we study the effects of using RBT as a problem sequencing strategy on students' learning. We compare a blocking strategy based on RBT against the random strategy. We also implement the reversed hierarchical order of this taxonomy as a strategy to understand the effect of a contrast behaviour, if any. We also examine both forward and reverse hierarchical orders by enhancing them with interleaving behaviour. We use deep learning based knowledge tracing model, Deep Knowledge Tracing to simulate the students' behaviour. We observe that forward hierarchical order yields a significant gain over reverse hierarchical order. Interestingly, interleaving on RBT did not outperform blocking strategy as expected [6].
机译:修订的Bloom分类法(RBT)本质上是分层的,它是教师分类课程学习目标的常用词汇。在这项工作中,我们研究了使用RBT作为问题排序策略对学生学习的影响。我们将基于RBT的阻止策略与随机策略进行了比较。我们还将这种分类法的颠倒层次顺序作为一种策略来理解对比行为的效果(如果有)。我们还通过增强交织行为来检查正向和反向层次结构顺序。我们使用基于深度学习的知识追踪模型,即“深度知识追踪”来模拟学生的行为。我们观察到,正向层次顺序比反向层次顺序产生了显着的收益。有趣的是,在RBT上的交织并没有比预期的阻止策略更好[6]。

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