2021
DOI: 10.1155/2021/2878189
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A Knowledge Graph Entity Disambiguation Method Based on Entity‐Relationship Embedding and Graph Structure Embedding

Abstract: The purpose of knowledge graph entity disambiguation is to match the ambiguous entities to the corresponding entities in the knowledge graph. Current entity ambiguity elimination methods usually use the context information of the entity and its attributes to obtain the mention embedding vector, compare it with the candidate entity embedding vector for similarity, and perform entity matching through the similarity. The disadvantage of this type of method is that it ignores the structural characteristics of the … Show more

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Cited by 6 publications
(5 citation statements)
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“…Specifically, neural network-based approaches have gained popularity by incorporating the subgraph structure features of knowledge bases. These features are utilized as inputs to graph neural networks, enabling the disambiguation of entities within the knowledge base (Ma et al, 2021). Various methods have been explored, including convolutional and recurrent neural networks, as well as LSTM networks, to disambiguate entities based on extracted associations among them (Geng et al, 2021;Phan et al, 2017).…”
Section: Named Entity Disambiguationmentioning
confidence: 99%
“…Specifically, neural network-based approaches have gained popularity by incorporating the subgraph structure features of knowledge bases. These features are utilized as inputs to graph neural networks, enabling the disambiguation of entities within the knowledge base (Ma et al, 2021). Various methods have been explored, including convolutional and recurrent neural networks, as well as LSTM networks, to disambiguate entities based on extracted associations among them (Geng et al, 2021;Phan et al, 2017).…”
Section: Named Entity Disambiguationmentioning
confidence: 99%
“…Graph neural networks (GNN) have been used to represent KB facts to inform ED predictions (Sevgili et al, 2019;Ma et al, 2021). These approaches can potentially access the information in all KB facts, but are reliant on the quality of the graph embeddings, which may struggle to represent many basic semantics (Jain et al, 2021) particularly for unpopular entities (Mohamed et al, 2020).…”
Section: Ed With Knowledge Graph Embeddingsmentioning
confidence: 99%
“…Recent studies on multi-hop question answering attempt to build graphs based on entities and conduct reasoning over the constructed graph using graph neural networks [35][36][37][38], which are introduced to modify propagation limitation in long-distance relation. GNN-based question answering consists of many popular research directions, including reading comprehension, multiple-choice question answering, open domain question answering, and KBQA.…”
Section: Graph Neural Network Based Question Answeringmentioning
confidence: 99%