There has been an increased focus on creating conversational open-domain dialogue systems in the spoken dialogue community. Unlike traditional dialogue systems, these conversational systems cannot assume any specific information need or domain restrictions, i.e., the only inherent goal is to converse with the user on an unknown set of topics. While massive improvements in Natural Language Understanding (NLU) and the growth of available knowledge resources can partially support a robust conversation, these conversations generally lack the rapport between two humans that know each other. We developed a robust open-domain conversational system, Athena, that real Amazon Echo users access and evaluate at scale in the context of the Alexa Prize competition. We experiment with methods intended to increase intimacy between Athena and the user by heuristically developing a rule-based user model that personalizes both the current and subsequent conversations and evaluating specific personal opinion question strategies in A/B studies. Our results show a statistically significant positive impact on perceived conversation quality and length when employing these strategies.
翻译:与传统对话系统不同,这些对话系统无法承担任何具体的信息需要或领域限制,也就是说,唯一的固有目标是与用户就一系列未知议题进行交谈。虽然在自然语言理解方面的大规模改进和现有知识资源的增长可以部分地支持强有力的对话,但这些对话通常缺乏两个互相认识的人之间的和谐关系。我们开发了一个强有力的开放对话系统,即雅典娜,在亚历山大奖竞赛中,真正的亚马逊回声用户可以大规模地访问和评估。我们实验了旨在增加雅典娜与用户之间亲密关系的方法,通过超自然地开发一种基于规则的用户模式,将当前和随后的对话个性化,并评价A/B研究中的具体个人意见问题战略。我们的结果显示,在采用这些战略时,在统计上对人们所认为的对话质量和长度产生了显著的积极影响。</s>