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END-TO-END STRUCTURE-AWARE CONVOLUTIONAL NETWORKS FOR KNOWLEDGE BASE COMPLETION

机译:端到端的结构化感知卷积网络,用于知识库的完成

摘要

A method for knowledge base completion includes encoding a knowledge base comprising entities and relations between the entities into embeddings for the entities and embeddings for the relations. The embeddings for the entities are encoded based on a Graph Convolutional Network (GCN) with different weights for at least some different types of the relations, which GCN is called a Weighted GCN (WGCN). The method further includes decoding the embeddings by a convolutional network for relation prediction. The convolutional network is configured to apply one dimensional (1D) convolutional filters on the embeddings, which convolutional network is called Conv-TransE. The method further includes at least partially complete the knowledge base based on the relation prediction.
机译:用于知识库完成的方法包括:将包括实体和实体之间的关系的知识库编码为用于实体的嵌入和用于关系的嵌入。实体的嵌入是基于图卷积网络(GCN)进行编码的,该图卷积网络对于至少某些不同类型的关系具有不同的权重,该GCN称为加权GCN(WGCN)。该方法还包括通过卷积网络对嵌入进行解码以进行关系预测。卷积网络被配置为在嵌入上应用一维(1D)卷积滤波器,该卷积网络称为Conv-TransE。该方法进一步包括基于关系预测至少部分地完成知识库。

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