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Fine-grained entity typing for knowledge base completion

机译:细粒度实体键入知识库完成

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Most work on knowledge base completion focuses on relations between entities, while entity types are also important knowledge. This paper addresses the problem of fine-grained entity typing for knowledge base completion. Context information plays a vital role in fine-grained entity typing, hence there is an urgent need to find ideal context representations. This paper presents a new approach CNNJM (convolutional neural network joint model) to learn the embeddings of the entities and their contextual information using convolutional neural network and correctly categorize the entities into their fine-grained type classes. We show that CNNJM outperforms state-of-art methods on a fine-grained entity typing benchmark.
机译:大多数关于知识库完成的工作侧重于实体之间的关系,而实体类型也是重要的知识。本文解决了键入知识库完成的细粒度实体问题。背景信息在细粒度的实体键入中扮演一个至关重要的作用,因此迫切需要找到理想的上下文表示。本文提出了一种新方法CNNJM(卷积神经网络联合模型),用于使用卷积神经网络学习实体的嵌入及其上下文信息,并将实体正确分类为其细粒度类型。我们表明CNNJM在细粒度的实体键入基准上表现出最先进的方法。

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