何时说什么和如何说:调整口语对话系统的精细化和间接性

Q1 Arts and Humanities
Juliana Miehle, W. Minker, Stefan Ultes
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引用次数: 2

摘要

为了设计一个能够适应用户沟通特质的口语对话系统,我们研究了是否有可能将人机交互中沟通风格使用的见解延续到人机交互中。在广泛的文献综述中,我们发现交际风格在人类交际中起着重要的作用。使用多语言数据集,我们表明系统的通信风格与用户先前的通信风格之间存在显著的相关性。这就是为什么提出了扩展口语对话系统标准体系结构的两个组件:1)自动识别用户通信风格的通信风格分类器和2)选择适当系统通信风格的通信风格选择模块。我们考虑了沟通风格的精细化和间接,因为它已经表明,他们影响用户的满意度和用户对对话的感知。我们提出了一种基于监督学习的神经分类方法。神经网络被训练和评估,这些特征可以在每个口语对话系统的持续交互过程中自动衍生。结果表明,这两个组件都产生了可靠的结果,并且以多数类分类器的形式优于基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When to Say What and How: Adapting the Elaborateness and Indirectness of Spoken Dialogue Systems
With the aim of designing a spoken dialogue system which has the ability to adapt to the user's communication idiosyncrasies, we investigate whether it is possible to carry over insights from the usage of communication styles in human-human interaction to human-computer interaction. In an extensive literature review, it is demonstrated that communication styles play an important role in human communication. Using a multi-lingual data set, we show that there is a significant correlation between the communication style of the system and the preceding communication style of the user. This is why two components that extend the standard architecture of spoken dialogue systems are presented: 1) a communication style classifier that automatically identifies the user communication style and 2) a communication style selection module that selects an appropriate system communication style. We consider the communication styles elaborateness and indirectness as it has been shown that they influence the user's satisfaction and the user's perception of a dialogue. We present a neural classification approach based on supervised learning for each task. Neural networks are trained and evaluated with features that can be automatically derived during an ongoing interaction in every spoken dialogue system. It is shown that both components yield solid results and outperform the baseline in form of a majority-class classifier.
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来源期刊
Dialogue and Discourse
Dialogue and Discourse Arts and Humanities-Language and Linguistics
CiteScore
1.90
自引率
0.00%
发文量
7
审稿时长
12 weeks
期刊介绍: D&D seeks previously unpublished, high quality articles on the analysis of discourse and dialogue that contain -experimental and/or theoretical studies related to the construction, representation, and maintenance of (linguistic) context -linguistic analysis of phenomena characteristic of discourse and/or dialogue (including, but not limited to: reference and anaphora, presupposition and accommodation, topicality and salience, implicature, ---discourse structure and rhetorical relations, discourse markers and particles, the semantics and -pragmatics of dialogue acts, questions, imperatives, non-sentential utterances, intonation, and meta--communicative phenomena such as repair and grounding) -experimental and/or theoretical studies of agents'' information states and their dynamics in conversational interaction -new analytical frameworks that advance theoretical studies of discourse and dialogue -research on systems performing coreference resolution, discourse structure parsing, event and temporal -structure, and reference resolution in multimodal communication -experimental and/or theoretical results yielding new insight into non-linguistic interaction in -communication -work on natural language understanding (including spoken language understanding), dialogue management, -reasoning, and natural language generation (including text-to-speech) in dialogue systems -work related to the design and engineering of dialogue systems (including, but not limited to: -evaluation, usability design and testing, rapid application deployment, embodied agents, affect detection, -mixed-initiative, adaptation, and user modeling). -extremely well-written surveys of existing work. Highest priority is given to research reports that are specifically written for a multidisciplinary audience. The audience is primarily researchers on discourse and dialogue and its associated fields, including computer scientists, linguists, psychologists, philosophers, roboticists, sociologists.
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