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Knowledge Graph Inference for spoken dialog systems

机译:语音对话系统的知识图推理

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We propose Inference Knowledge Graph, a novel approach of remapping existing, large scale, semantic knowledge graphs into Markov Random Fields in order to create user goal tracking models that could form part of a spoken dialog system. Since semantic knowledge graphs include both entities and their attributes, the proposed method merges the semantic dialog-state-tracking of attributes and the database lookup of entities that fulfill users' requests into one single unified step. Using a large semantic graph that contains all businesses in Bellevue, WA, extracted from Microsoft Satori, we demonstrate that the proposed approach can return significantly more relevant entities to the user than a baseline system using database lookup.
机译:我们提出了推理知识图,将现有的大规模,语义知识图形重新映射到马尔可夫随机字段中的新方法,以便创建可以形成口头对话系统的一部分的用户目标跟踪模型。由于语义知识图包括实体和它们的属性,因此所提出的方法合并了属性的语义对话框 - 符合用户请求的实体的数据库查找到一个单一统一步骤。使用包含Bellevue,WA中的所有业务的大型语义图,从Microsoft Satori中提取,我们证明所提出的方法可以与使用数据库查找的基线系统返回更大相关的实体。

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