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Balancing Human Efforts and Performance of Student Response Analyzer in Dialog-Based Tutors

机译:在基于对话的导师中平衡人类的努力和学生反应分析器的性能

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Accurately interpreting student responses is a critical requirement of dialog-based intelligent tutoring systems. The accuracy of supervised learning methods, used for interpreting or analyzing student responses, is strongly dependent on the availability of annotated training data. Collecting and grading student responses is tedious, time-consuming, and expensive. This work proposes an iterative data collection and grading approach. We show that data collection efforts can be significantly reduced by predicting question difficulty and by collecting answers from a focused set of students. Further, grading efforts can be reduced by filtering student answers that may not be helpful in training Student Response Analyzer (SRA). To ensure the quality of grades, we analyze the grader characteristics, and show improvement when a biased grader is removed. An experimental evaluation on a large scale dataset shows a reduction of up to 28% in the data collection cost, and up to 10% in grading cost while improving the response analysis macro-average Fl.
机译:准确地解释学生的回答是基于对话框的智能辅导系统的关键要求。用于解释或分析学生反应的监督学习方法的准确性在很大程度上取决于带注释的培训数据的可用性。收集和评价学生的回答很繁琐,耗时且昂贵。这项工作提出了一种迭代的数据收集和分级方法。我们表明,通过预测问题的难度和从有重点的学生那里收集答案,可以大大减少数据收集的工作量。此外,可以通过过滤学生的答案来减少评分工作,这可能对培训学生反应分析器(SRA)没有帮助。为确保评分的质量,我们分析了评分器的特征,并显示了有偏见的评分器被移除时的改进。在大规模数据集上的实验评估显示,数据收集成本降低了多达28%,分级成本降低了10%,同时改善了响应分析的宏观平均水平F1。

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