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Refinement of a Q-matrix with an Ensemble Technique Based on Multi-label Classification Algorithms

机译:基于多标签分类算法的集成技术优化Q矩阵

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There are numerous algorithms and tools to help an expert map exercises and tasks to underlying skills. The last decade has witnessed a wealth of data driven approaches aiming to refine expert-defined mappings of tasks to skill. This refinement can be seen as a classification problem: for each possible mapping of task to skill, the classifier has to decide whether the expert's advice is correct, or incorrect. Whereas most algorithms are working at the level of individual mappings, we introduce an approach based on a multi-label classification algorithm that is trained on the mapping of a task to all skills simultaneously. The approach is shown to outperform the existing task to skill mapping refinement techniques.
机译:有许多算法和工具可帮助专家将练习和任务映射到基本技能。在过去的十年中,目睹了许多数据驱动的方法,这些方法旨在完善专家定义的任务与技能的映射。这种改进可以看作是分类问题:对于任务到技能的每种可能的映射,分类器必须决定专家的建议是正确还是不正确。尽管大多数算法都在单个映射的级别上起作用,但是我们介绍了一种基于多标签分类算法的方法,该方法在同时将任务映射到所有技能上受过训练。该方法显示出优于现有任务的技能映射细化技术。

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