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Interaction Style Recognition Based on Multi-Layer Multi-View Profile Representation

机译:基于多层多视图配置文件表示的交互样式识别

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摘要

Interaction Style (IS) refers to patterns of interaction containing highly contextual and innate information. Awareness of our IS can help us discover interpersonal conflicts and guide us how to interact with others. Recently, automatic IS recognition is becoming increasingly important in the design of a dialogue system for harmonious interaction. With the goal to select appropriate responses, four IS types proposed by Berens are selected as the basis for our study. In this study, multiple views (multi-views) of the utterances during interaction, including emotions and dialogue topics, are recognized first. Inspired by the emotion profile theory, the IS profiles are then extracted using the multi-view features to better characterize the IS of the interactional utterances. Similar to the multilayer architectures in deep neural networks, a multi-layer multi-view IS profile representation method, structured layer by layer through embedding the multi-views, is proposed to better interpret intermediate representations in the feature space of the interactional utterances based on a probabilistic fusion model. The IS is finally recognized by using the Support Vector Machine (SVM) based on the obtained IS profiles. Experimental results demonstrate that the proposed method achieved an encouraging IS recognition accuracy and outperformed the previous method.
机译:交互样式(IS)是指包含高度上下文和先天信息的交互模式。意识到我们的信息系统可以帮助我们发现人际冲突,并指导我们如何与他人互动。最近,自动IS识别在设计用于和谐交互的对话系统中变得越来越重要。为了选择适当的响应,我们选择了Berens提出的四种IS类型作为我们研究的基础。在这项研究中,首先要认识到交互过程中话语的多种视图(multi-views),包括情感和对话主题。受情感概貌理论的启发,然后使用多视图功能提取IS概貌,以更好地表征交互话语的IS。类似于深度神经网络中的多层体系结构,提出了一种多层多视图IS配置文件表示方法,该方法通过嵌入多视图来逐层结构化,以更好地解释基于交互言语特征空间中的中间表示。概率融合模型。最终通过使用支持向量机(SVM)基于获得的IS配置文件来识别IS。实验结果表明,该方法取得了令人鼓舞的IS识别精度,并且优于以前的方法。

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