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The Impact of Data Quantity and Source on the Quality of Data-Driven Hints for Programming

机译:数据数量和来源对数据驱动的编程提示质量的影响

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In the domain of programming, intelligent tutoring systems increasingly employ data-driven methods to automate hint generation. Evaluations of these systems have largely focused on whether they can reliably provide hints for most students, and how much data is needed to do so, rather than how useful the resulting hints are to students. We present a method for evaluating the quality of data-driven hints and how their quality is impacted by the data used to generate them. Using two datasets, we investigate how the quantity of data and the source of data (whether it comes from students or experts) impact one hint generation algorithm. We find that with student training data, hint quality stops improving after 15-20 training solutions and can decrease with additional data. We also find that student data outperforms a single expert solution but that a comprehensive set of expert solutions generally performs best.
机译:在编程领域,智能辅导系统越来越多地采用数据驱动的方法来自动生成提示。对这些系统的评估主要集中在它们是否可以可靠地为大多数学生提供提示,以及需要多少数据,而不是所产生的提示对学生有多有用。我们提出了一种评估数据驱动提示的质量以及用于生成它们的数据如何影响其质量的方法。使用两个数据集,我们研究了数据量和数据源(无论是来自学生还是专家)如何影响一种提示生成算法。我们发现,使用学生培训数据,提示质量在15-20个培训解决方案后将停止改善,并可能随着其他数据而降低。我们还发现,学生数据的性能优于单个专家解决方案,但一整套综合的专家解决方案通常表现最佳。

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