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Knowledge Graph Embedding via Graph Attenuated Attention Networks

机译:通过图嵌入的知识图表衰减注意网络

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摘要

Knowledge graphs contain a wealth of real-world knowledge that can provide strong support for artificial intelligence applications. Much progress has been made in knowledge graph completion, state-of-the-art models are based on graph convolutional neural networks. These models automatically extract features, in combination with the features of the graph model, to generate feature embeddings with a strong expressive ability. However, these methods assign the same weights on the relation path in the knowledge graph and ignore the rich information presented in neighbor nodes, which result in incomplete mining of triple features. To this end, we propose Graph Attenuated Attention networks(GAATs), a novel representation method, which integrates an attenuated attention mechanism to assign different weight in different relation path and acquire the information from the neighborhoods. As a result, entities and relations can be learned in any neighbors. Our empirical research provides insight into the effectiveness of the attenuated attention-based models, and we show significant improvement compared to the state-of-the-art methods on two benchmark datasets WN18RR and FB15k-237.
机译:知识图包含丰富的真实知识,可以为人工智能应用提供强大的支持。知识图完成已经取得了很大进展,最先进的模型基于图形卷积神经网络。这些模型与图形模型的功能组合自动提取特征,以产生具有强大的表现力的嵌入功能。但是,这些方法在知识图中的关系路径上分配相同的权重,忽略邻居节点中呈现的丰富信息,从而导致三联功能的挖掘。为此,我们提出了衰减注意网络(GaATS),这是一种新颖的表示方法,这集成了衰减注意机制,以在不同关系路径中分配不同权重,并从附近获取信息。因此,可以在任何邻居中学到实体和关系。我们的实证研究提供了洞察力对基于关注的型号的有效性,与两个基准数据集Wn18RR和FB15K-237相比,我们表现出显着的改进。

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