具有行为和会话流特征的会话任务助手的评价预测

Rafael Ferreira, David Semedo, João Magalhães
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引用次数: 1

摘要

预测会话任务助理(CTA)的成功对于理解用户行为并采取相应行动至关重要。在本文中,我们提出了TB-Rater,这是一个Transformer模型,它结合了会话流特征和用户行为特征,用于预测CTA场景中的用户评级。特别是,我们使用了在Alexa TaskBot挑战中收集的真实的人类代理对话和评级,这是一种新颖的多模式和多回合对话环境。我们的研究结果显示了在一个模型中对会话流和会话行为方面进行建模的优势,用于离线评级预测。此外,对cta特定行为特征的分析可以深入了解此设置,并可用于引导未来的系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rating Prediction in Conversational Task Assistants with Behavioral and Conversational-Flow Features
Predicting the success of Conversational Task Assistants (CTA) can be critical to understand user behavior and act accordingly. In this paper, we propose TB-Rater, a Transformer model which combines conversational-flow features with user behavior features for predicting user ratings in a CTA scenario. In particular, we use real human-agent conversations and ratings collected in the Alexa TaskBot challenge, a novel multimodal and multi-turn conversational context. Our results show the advantages of modeling both the conversational-flow and behavioral aspects of the conversation in a single model for offline rating prediction. Additionally, an analysis of the CTA-specific behavioral features brings insights into this setting and can be used to bootstrap future systems.
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