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Deriving local relational surface forms from dependency-based entity embeddings for unsupervised spoken language understanding

机译:从基于依赖性的实体嵌入的嵌入式嵌入式嵌入式的语言理解中获取本地关系表面表单

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Recent works showed the trend of leveraging web-scaled structured semantic knowledge resources such as Freebase for open domain spoken language understanding (SLU). Knowledge graphs provide sufficient but ambiguous relations for the same entity, which can be used as statistical background knowledge to infer possible relations for interpretation of user utterances. This paper proposes an approach to capture the relational surface forms by mapping dependency-based contexts of entities from the text domain to the spoken domain. Relational surface forms are learned from dependency-based entity embeddings, which encode the contexts of entities from dependency trees in a deep learning model. The derived surface forms carry functional dependency to the entities and convey the explicit expression of relations. The experiments demonstrate the efficiency of leveraging derived relational surface forms as local cues together with prior background knowledge.
机译:最近的作品显示了利用Web缩放结构化语义知识资源的趋势,例如FreeBase用于开放式域名语言理解(SLU)。知识图表为同一实体提供了足够但暧昧的关系,可以用作统计背景知识,以推断出对用户话语解释的可能关系。本文提出了一种通过将基于依赖性的实体的上下文从文本域映射到所说的域来捕获关系曲面形式的方法。从基于依赖性的实体嵌入学习的关系表面表单,该实体嵌入物在深度学习模型中从依赖树中编码实体的上下文。衍生的表面形式携带对实体的功能依赖性,并传达了关系的明确表达。实验表明,与现有背景知识一起展示利用衍生的关系表面形式的效率。

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