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Scientific Article details

Title Automatic Concept Extraction Based on Semantic Graphs From Big Data in Smart City
ID_Doc 41434
Authors Qiu, J; Chai, YH; Tian, ZH; Du, XJ; Guizani, M
Title Automatic Concept Extraction Based on Semantic Graphs From Big Data in Smart City
Year 2020
Published Ieee Transactions On Computational Social Systems, 7, 1
DOI 10.1109/TCSS.2019.2946181
Abstract With the rapid development of smart cities, various types of sensors can rapidly collect a large amount of data, and it becomes increasingly important to discover effective knowledge and process information from massive amounts of data. Currently, in the field of knowledge engineering, knowledge graphs, especially domain knowledge graphs, play important roles and become the infrastructure of Internet knowledge-driven intelligent applications. Domain concept extraction is critical to the construction of domain knowledge graphs. Although there have been some works that have extracted concepts, semantic information has not been fully used. However, the excellent concept extraction results can be obtained by making full use of semantic information. In this article, a novel concept extraction method, Semantic Graph-Based Concept Extraction (SGCCE), is proposed. First, the similarities between terms are calculated using the word co-occurrence, the LDA topic model and Word2Vec. Then, a semantic graph of terms is constructed based on the similarities between the terms. Finally, according to the semantic graph of the terms, community detection algorithms are used to divide the terms into different communities where each community acts as a concept. In the experiments, we compare the concept extraction results that are obtained by different community detection algorithms to analyze the different semantic graphs. The experimental results show the effectiveness of our proposed method. This method can effectively use semantic information, and the results of the concept extraction are better from domain big data in smart cities.
Author Keywords Semantics; Data mining; Smart cities; Big Data; Clustering algorithms; Frequency-domain analysis; Detection algorithms; Knowledge discovery; text analysis; text mining
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000519544000020
WoS Category Computer Science, Cybernetics; Computer Science, Information Systems
Research Area Computer Science
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