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Measuring the Polarity of Conversations between Chatbots and Humans: A Use Case in the Banking Sector

机译:测量聊天机器人与人类之间对话的极性:银行业的一个使用案例

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This paper describes a study on opinion analysis applied to both human to chatbot conversations, but also to human to human conversations using data coming from the banking sector. A polarity classifier SVM model applied to conversations provides insights and visualisations of the satisfaction of users at a given time and its evolution. We conducted a study on the evolution of the opinion on the conversations started with the chatbot and then transferred to a human agent. This work illustrates how opinion analysis techniques can be applied to improve the user experience of the customers but also detect topics that generate frustrations with a chatbot or with human experts.
机译:本文描述了一项意见分析研究,该研究不仅适用于人与聊天机器人之间的对话,而且也适用于使用来自银行业的数据进行人与人之间的对话。应用于对话的极性分类器SVM模型可提供给定时间的用户满意度及其演变的见解和可视化信息。我们对从聊天机器人开始的对话意见演变进行了研究,然后将其转移给人工代理。这项工作说明了如何应用意见分析技术来改善客户的用户体验,还可以检测与聊天机器人或人类专家产生挫败感的主题。

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