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A Tutorial Dialogue System for Real-Time Evaluation of Unsupervised Dialogue Act Classifiers: Exploring System Outcomes

机译:无监督对话法案分类机的实时评估教程对话系统:探索系统成果

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Dialogue act classification is an important step in understanding students' utterances within tutorial dialogue systems. Machine-learned models of dialogue act classification hold great promise, and among these, unsupervised dialogue act classifiers have the great benefit of eliminating the human dialogue act annotation effort required to label corpora. In contrast to traditional evaluation approaches which judge unsupervised dialogue act classifiers by accuracy on manual labels, we present results of a study to evaluate the performance of these models with respect to their performance within end-to-end system evaluation. We compare two versions of the tutorial dialogue system for introductory computer science: one that relies on a supervised dialogue act classifier and one that depends on an unsupervised dialogue act classifier. A study with 51 students shows that both versions of the system achieve similar learning gains and user satisfaction. Additionally, we show that some incoming student characteristics are highly correlated with students' perceptions of their experience during tutoring. This first end-to-end evaluation of an unsupervised dialogue act classifier within a tutorial dialogue system serves as a step toward acquiring tutorial dialogue management models in a fully automated, scalable way.
机译:对话法案分类是了解学生在辅导对话系统中的话语的重要一步。机器学习的对话法案分类持有巨大的承诺,其中,无监督的对话法案分类机具有消除人类对话法案所需的人体对话法案的巨大福利。与传统的评估方法相比,通过对手动标签的准确性判断无监督的对话法案分类机,我们提出了一项研究的结果,以评估这些模型在端到端系统评估中的性能方面的性能。我们比较两个版本的介绍性计算机科学的教程对话系统:依赖于监督的对话法案分类器和取决于无监督的对话法案分类器的一个版本。 51名学生的一项研究表明,两个版本的系统都可以实现类似的学习收益和用户满意度。此外,我们表明,一些传入的学生特征与学生对他们在辅导过程中的经验的看法高度相关。在教程对话系统中,对无监督的对话动作分类器的第一端到端评估是以全自动,可扩展的方式获取教程对话管理模型的步骤。

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