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Building chatbots from large scale domain-specific knowledge bases: challenges and opportunities

机译:从特定领域的大型知识库构建聊天机器人:挑战与机遇

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Popular conversational agents frameworks such as Alexa Skills Kit (ASK) and Google Actions (gActions) offer unprecedented opportunities for facilitating the development and deployment of voice-enabled AI solutions in various verticals. Nevertheless, understanding user utterances with high accuracy remains a challenging task with these frameworks. Particularly, when building chatbots with large volume of domain-specific entities. In this paper, we describe the challenges and lessons learned from building a large scale virtual assistant for understanding and responding to equipment-related complaints. In the process, we describe an alternative scalable framework for: 1) extracting the knowledge about equipment components and their associated problem entities from short texts, and 2) learning to identify such entities in user utterances. We show through evaluation on a real dataset that the proposed framework, compared to off-the-shelf popular ones, scales better with large volume of entities being up to 30% more accurate, and is more effective in understanding user utterances with domain-specific entities.
机译:流行的会话代理框架,如alexa技能套件(ark)和谷歌操作(Googts)提供了前所未有的机会,以促进在各种垂直方面开发和部署语音的AI解决方案。然而,了解具有高精度的用户话语仍然是具有这些框架的具有挑战性的任务。特别是,在构建具有大量域的特定实体的聊天。在本文中,我们描述了从建立大规模虚拟助手的挑战和经验教训,以了解和应对与设备有关的投诉。在此过程中,我们描述了一种替代可扩展的框架:1)从短文本中提取关于设备组件及其相关问题实体的知识,以及2)学习来识别用户话语中的这些实体。我们通过对拟议的框架进行了评估来展示所提出的框架,与现成的流行相比,缩放更好的尺寸,大量实体更准确,更有效地了解具有域特定的用户话语实体。

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