This survey provides a comprehensive overview of knowledge graph embedding models and their applications.
The key highlights are:
Introduction to knowledge graphs and their representation models, such as RDF, property-centric, and Wikidata.
Discussion of large-scale knowledge graphs like Freebase, DBpedia, and Wikidata.
Overview of deep learning models, including RNN, LSTM, GRU, and CNN, and their use in knowledge graph applications.
Detailed explanation of translation-based (TransE, TransR) and neural network-based (SME, MLP, NTN, NAM, ConvKB, KBGAN) knowledge graph embedding models. These models differ in the semantic properties they capture, scoring functions, and architectures.
Applications of knowledge graph embeddings in various domains, such as fake news/rumor detection, drug-related applications, suicidal ideation analysis, and knowledge graph completion using social media data.
Conclusion highlighting the strengths of knowledge graph embeddings in capturing context-specific semantics and potential future research directions.
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by Manita Pote alle arxiv.org 04-16-2024
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