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Validating Revised Bloom's Taxonomy Using Deep Knowledge Tracing

机译:使用深度知识跟踪验证经修订的Bloom分类法

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Revised Bloom's Taxonomy is used for classifying educational objectives. The said taxonomy describes a hierarchical ordering of cognitive skills from simple to complex. The Revised Taxonomy relaxed the strict cumulative hierarchical assumptions of the Original Taxonomy allowing overlaps. We use a knowledge tracing model, Deep Knowledge Tracing (DKT), to investigate the hierarchical nature of the Revised Taxonomy and also study the overlapping behavior of the Taxonomy. The DKT model is trained on about 42 million problems attempted on funtoot by the students, funtoot is an adaptive learning platform where students learn by answering problems. We propose a novel way to interpret the model's output to measure the effects of each learning objective on every other learning objectives. The results confirm the relaxed hierarchy of the skills from simple to complex. Moreover, the results also suggest overlaps even among the non-adjacent skills.
机译:经修订的Bloom分类法用于对教育目标进行分类。所述分类法描述了从简单到复杂的认知技能的等级排序。经修订的分类法放宽了原始分类法的严格累积层次假设,允许重叠。我们使用知识跟踪模型,即深度知识跟踪(DKT),来研究经修订的分类法的层次结构性质,并研究分类法的重叠行为。 DKT模型针对学生尝试在funtoot上尝试解决的约4,200万个问题进行了训练,funtoot是一种自适应学习平台,学生可以在其中通过回答问题来学习。我们提出了一种新颖的方法来解释模型的输出,以衡量每个学习目标对其他每个学习目标的影响。结果证实了从简单到复杂的轻松技能层次。此外,结果还表明,即使是非相邻技能也存在重叠。

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