Knowledge Graph Representation via Similarity-Based Embedding

Knowledge graph, a typical multi-relational structure, includes large-scale facts of the world, yet it is still far away from completeness. Knowledge graph embedding, as a representation method, constructs a low-dimensional and continuous space to describe the latent semantic information and predict...

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Main Authors: Zhen Tan, Xiang Zhao, Yang Fang, Bin Ge, Weidong Xiao
Format: Article
Language:English
Published: Hindawi Limited 2018-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2018/6325635
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spelling doaj-f7f1f4f2d9074507bb9a069705baed5a2021-07-02T02:12:04ZengHindawi LimitedScientific Programming1058-92441875-919X2018-01-01201810.1155/2018/63256356325635Knowledge Graph Representation via Similarity-Based EmbeddingZhen Tan0Xiang Zhao1Yang Fang2Bin Ge3Weidong Xiao4Science and Technology on Information Systems Engineering Laboratory, National University of Defense Technology, Changsha, Hunan 410073, ChinaScience and Technology on Information Systems Engineering Laboratory, National University of Defense Technology, Changsha, Hunan 410073, ChinaScience and Technology on Information Systems Engineering Laboratory, National University of Defense Technology, Changsha, Hunan 410073, ChinaScience and Technology on Information Systems Engineering Laboratory, National University of Defense Technology, Changsha, Hunan 410073, ChinaScience and Technology on Information Systems Engineering Laboratory, National University of Defense Technology, Changsha, Hunan 410073, ChinaKnowledge graph, a typical multi-relational structure, includes large-scale facts of the world, yet it is still far away from completeness. Knowledge graph embedding, as a representation method, constructs a low-dimensional and continuous space to describe the latent semantic information and predict the missing facts. Among various solutions, almost all embedding models have high time and memory-space complexities and, hence, are difficult to apply to large-scale knowledge graphs. Some other embedding models, such as TransE and DistMult, although with lower complexity, ignore inherent features and only use correlations between different entities to represent the features of each entity. To overcome these shortcomings, we present a novel low-complexity embedding model, namely, SimE-ER, to calculate the similarity of entities in independent and associated spaces. In SimE-ER, each entity (relation) is described as two parts. The entity (relation) features in independent space are represented by the features entity (relation) intrinsically owns and, in associated space, the entity (relation) features are expressed by the entity (relation) features they connect. And the similarity between the embeddings of the same entities in different representation spaces is high. In experiments, we evaluate our model with two typical tasks: entity prediction and relation prediction. Compared with the state-of-the-art models, our experimental results demonstrate that SimE-ER outperforms existing competitors and has low time and memory-space complexities.http://dx.doi.org/10.1155/2018/6325635
collection DOAJ
language English
format Article
sources DOAJ
author Zhen Tan
Xiang Zhao
Yang Fang
Bin Ge
Weidong Xiao
spellingShingle Zhen Tan
Xiang Zhao
Yang Fang
Bin Ge
Weidong Xiao
Knowledge Graph Representation via Similarity-Based Embedding
Scientific Programming
author_facet Zhen Tan
Xiang Zhao
Yang Fang
Bin Ge
Weidong Xiao
author_sort Zhen Tan
title Knowledge Graph Representation via Similarity-Based Embedding
title_short Knowledge Graph Representation via Similarity-Based Embedding
title_full Knowledge Graph Representation via Similarity-Based Embedding
title_fullStr Knowledge Graph Representation via Similarity-Based Embedding
title_full_unstemmed Knowledge Graph Representation via Similarity-Based Embedding
title_sort knowledge graph representation via similarity-based embedding
publisher Hindawi Limited
series Scientific Programming
issn 1058-9244
1875-919X
publishDate 2018-01-01
description Knowledge graph, a typical multi-relational structure, includes large-scale facts of the world, yet it is still far away from completeness. Knowledge graph embedding, as a representation method, constructs a low-dimensional and continuous space to describe the latent semantic information and predict the missing facts. Among various solutions, almost all embedding models have high time and memory-space complexities and, hence, are difficult to apply to large-scale knowledge graphs. Some other embedding models, such as TransE and DistMult, although with lower complexity, ignore inherent features and only use correlations between different entities to represent the features of each entity. To overcome these shortcomings, we present a novel low-complexity embedding model, namely, SimE-ER, to calculate the similarity of entities in independent and associated spaces. In SimE-ER, each entity (relation) is described as two parts. The entity (relation) features in independent space are represented by the features entity (relation) intrinsically owns and, in associated space, the entity (relation) features are expressed by the entity (relation) features they connect. And the similarity between the embeddings of the same entities in different representation spaces is high. In experiments, we evaluate our model with two typical tasks: entity prediction and relation prediction. Compared with the state-of-the-art models, our experimental results demonstrate that SimE-ER outperforms existing competitors and has low time and memory-space complexities.
url http://dx.doi.org/10.1155/2018/6325635
work_keys_str_mv AT zhentan knowledgegraphrepresentationviasimilaritybasedembedding
AT xiangzhao knowledgegraphrepresentationviasimilaritybasedembedding
AT yangfang knowledgegraphrepresentationviasimilaritybasedembedding
AT binge knowledgegraphrepresentationviasimilaritybasedembedding
AT weidongxiao knowledgegraphrepresentationviasimilaritybasedembedding
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