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Examining the Impacts of Dialogue Content and System Automation on Affect Models in a Spoken Tutorial Dialogue System

机译:检查对话内容和系统自动化对语言对话系统中影响模型的影响

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Many dialogue system developers use data gathered from previous versions of the dialogue system to build models which enable the system to detect and respond to users' affect. Previous work in the dialogue systems community for domain adaptation has shown that large differences between versions of dialogue systems affect performance of ported models. Thus, we wish to investigate how more minor differences, like small dialogue content changes and switching from a wizarded system to a fully automated system, influence the performance of our affect detection models. We perform a post-hoc experiment where we use various data sets to train multiple models, and compare against a test set from the most recent version of our dialogue system. Analyzing these results strongly suggests that these differences do impact these models' performance.
机译:许多对话系统开发人员使用从以前版本的对话系统收集的数据来构建使系统能够检测和响应用户的影响的模型。以前的工作在对话系统社区中,域适应已经表明,对话系统版本之间的差异影响了移植型号的性能。因此,我们希望调查更多的差异,如小对话内容更改和从巫术系统转换为全自动系统,影响我们影响检测模型的性能。我们执行HOC实验,我们使用各种数据集来培训多个模型,并与我们对话系统最新版本的测试集进行比较。分析这些结果强烈表明这些差异会影响这些模型的性能。

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