面向任务的对话系统的意图消歧

Andrea Alfieri, Ralf Wolter, Seyyed Hadi Hashemi
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引用次数: 1

摘要

面向任务的对话系统(TODS)已被广泛应用于联络中心的特定领域虚拟助理,以路由客户呼叫或在会话交互中传递客户的信息需求。TODS使用自然语言理解组件,以便将用户命令映射到一组预定义的意图。然而,联络中心的用户往往不能在一个单一的话语中表达他们复杂的信息需求,从而导致制定模棱两可的用户命令。这可能会对意图分类产生负面影响,从而影响客户满意度。为了避免向虚拟助手的意图分类器提供模棱两可的用户命令,并帮助用户制定他们的命令,我们实现了一个解决方案:(1)识别用户何时含糊不清,虚拟助手应该问一个澄清问题,(2)消除用户命令的歧义,并以澄清问题的形式提供top-N最可能的意图。我们的实验结果表明,我们提出的意图消歧解决方案在意图消歧精度和平均倒数排名方面比基于流行度的意图消歧模型和自然语言理解引擎的意图排名模型在统计上有显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intent Disambiguation for Task-oriented Dialogue Systems
Task-Oriented Dialogue Systems (TODS) have been widely deployed for domain specific virtual assistants at contact centres to route customers' calls or deliver information needs of the customer in a conversational interaction. TODS employ natural language understanding components in order to map user commands to a set of pre-defined intents. However, Contact Centre users often fail to formulate their complex information needs in a single utterance which leads to formulating ambiguous user commands. This can negatively impact intent classification, and consequently customer satisfaction. To avoid feeding ambiguous user commands to the intent classifier of virtual assistants and help users in formulating their commands, we have implemented a solution that (1) identifies when a user is ambiguous and the virtual assistant should ask a clarification question, (2) disambiguates the user command and provides top-N most likely intents in a form of a clarification question. Our experimental result shows that our proposed intent disambiguation solution has a statistically significant improvement over a popularity based intent disambiguation model and an Intent Ranking Model of the Natural Language Understanding engine for a virtual assistant of a contact centre in terms of intent disambiguation accuracy and Mean Reciprocal Rank.
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