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Making AutoTutor Agents Smarter: AutoTutor Answer Clustering and Iterative Script Authoring

机译:使AutoTutor代理更智能:AutoTutor答案集群和迭代脚本创作

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AutoTutor uses conversational intelligent agents in learning environments. One of the major challenges in developing AutoTutor applications is to assess students' natural language answers to AutoTutor questions. We investigated an AutoTutor dataset with 3358 student answers to 49 AutoTutor questions. In comparisons with human ratings, we found that semantic matching works well for some questions but poor for others. This variation can be predicted by a measure called "question uncertainty", an entropy value on semantic cluster probabilities. Based on these findings, we propose an iterative AutoTutor script authoring process that can make AutoTutor agents smarter and improve assessment models by iteratively adding and modifying both questions and ideal answers.
机译:AutoTutor在学习环境中使用对话智能代理。开发AutoTutor应用程序的主要挑战之一是评估学生对AutoTutor问题的自然语言答案。我们调查了一个AutoTutor数据集,其中包含3358个学生对49个AutoTutor问题的回答。通过与人类评级进行比较,我们发现语义匹配在某些问题上效果很好,而在其他问题上效果不佳。这种变化可以通过称为“问题不确定性”的量度来预测,该量度是语义聚类概率的熵值。基于这些发现,我们提出了一个迭代的AutoTutor脚本创作过程,该过程可以通过迭代地添加和修改问题和理想答案来使AutoTutor代理更智能并改善评估模型。

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