With the flourish of services on the Internet, a prerequisite for service providers to precisely deliver services to their customers is to capture user requirements comprehensively, accurately, and efficiently. This is called the ``Service Requirement Elicitation (SRE)'' task. Considering the amount of customers is huge, it is an inefficient way for service providers to interact with each user by face-to-face dialog. Therefore, to elicit user requirements with the assistance of virtual intelligent assistants has become a mainstream way. Since user requirements generally consist of different levels of details and need to be satisfied by services from multiple domains, there is a huge potential requirement space for SRE to explore to elicit complete requirements. Considering that traditional dialogue system with static slots cannot be directly applied to the SRE task, it is a challenge to design an efficient dialogue strategy to guide users to express their complete and accurate requirements in such a huge potential requirement space. Based on the phenomenon that users tend to express requirements subjectively in a sequential manner, we propose a Personalized Utterance Style (PUS) module to perceive the personalized requirement expression habits, and then apply PUS to an dialogue strategy to efficiently complete the SRE task. Specifically, the dialogue strategy chooses suitable response actions for dynamically updating the dialogue state. With the assistance of PUS extracted from dialogue history, the system can shrink the search scope of potential requirement space. Experiment results show that the dialogue strategy with PUS can elicit more accurate user requirements with fewer dialogue rounds.
翻译:由于互联网上服务蓬勃发展,服务供应商准确向其客户提供服务的先决条件是全面、准确和高效地抓住用户需求,这被称为“服务需求弹性”任务。考虑到客户数量巨大,这是服务提供者通过面对面对话与每个用户互动的一种效率低下的方式。因此,在虚拟智能助理的协助下,在虚拟智能助理的协助下,征求用户需求已成为主流。由于用户需求通常包含不同程度的细节,需要由多个领域的服务满足,因此SRE有很大的潜在探索空间以获得完整的需求。考虑到固定位置的传统对话系统不能直接应用于SRE任务,因此设计高效的对话战略以指导用户在如此巨大的潜在需求空间中表达其完整和准确的要求是一项挑战。基于用户倾向于按顺序主观表达要求的现象,我们建议个人化的UTS风格模块可以理解个人化的需求表达习惯,然后将PUS应用到对话战略中,以便高效地更新SRE对话的准确时间档,从而从SRE历史分析中获取更精确的搜索范围。基于动态对话模式,我们建议个人化的UPUS风格模式能够理解个人化的用户需求表达需求,然后将PUS应用一个对话战略,从而高效地更新用户对话的搜索范围,从而显示SRE对话中更精确地显示SERE对话中的数据分析系统能够显示空间变化变化变化变化变化分析战略。