Building open domain conversational systems that allow users to have engaging conversations on topics of their choice is a challenging task. Alexa Prize was launched in 2016 to tackle the problem of achieving natural, sustained, coherent and engaging open-domain dialogs. In the second iteration of the competition in 2018, university teams advanced the state of the art by using context in dialog models, leveraging knowledge graphs for language understanding, handling complex utterances, building statistical and hierarchical dialog managers, and leveraging model-driven signals from user responses. The 2018 competition also included the provision of a suite of tools and models to the competitors including the CoBot (conversational bot) toolkit, topic and dialog act detection models, conversation evaluators, and a sensitive content detection model so that the competing teams could focus on building knowledge-rich, coherent and engaging multi-turn dialog systems. This paper outlines the advances developed by the university teams as well as the Alexa Prize team to achieve the common goal of advancing the science of Conversational AI. We address several key open-ended problems such as conversational speech recognition, open domain natural language understanding, commonsense reasoning, statistical dialog management, and dialog evaluation. These collaborative efforts have driven improved experiences by Alexa users to an average rating of 3.61, the median duration of 2 mins 18 seconds, and average turns to 14.6, increases of 14%, 92%, 54% respectively since the launch of the 2018 competition. For conversational speech recognition, we have improved our relative Word Error Rate by 55% and our relative Entity Error Rate by 34% since the launch of the Alexa Prize. Socialbots improved in quality significantly more rapidly in 2018, in part due to the release of the CoBot toolkit.
翻译:2018年的竞赛还包括向竞争者提供一系列工具和模型,包括CoBot(Cobotal bott)工具包、主题和对话的频率检测模型、对话评估员以及敏感的内容检测模型。在2018年的第二次竞赛中,大学团队通过在对话模式中利用背景,利用知识图表促进语言理解,处理复杂的言论,建立统计和等级对话管理者,以及利用用户响应的模型驱动信号。2018年的竞赛还包括向竞争者提供一套工具和模型,包括CoBot(Cobot)工具包、主题和对话的频率检测模型、快速、对话评估员和敏感的内容检测模型。在2018年的竞赛中,大学团队和Alexa奖奖团队为实现推进交流性AI科学这一共同目标而取得的进展。我们通过对话的语音识别、公开的域域域域内语言理解、共同思维推理、相对对话的准确度检测模型、对话评估中的相对比例分析员以及自18年的周期以来的合作性平均持续度评估,通过启动以来,我们之间平均水平的频率的排名提高。