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Learned Semantic Index Structure Using Knowledge Graph Embedding and Density-Based Spatial Clustering Techniques
Content Provider | MDPI |
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Author | Sun, Yuxiang Chun, Seok-Ju Lee, Yongju |
Copyright Year | 2022 |
Description | Recently, a pragmatic approach toward achieving semantic search has made significant progress with knowledge graph embedding (KGE). Although many standards, methods, and technologies are applicable to the linked open data (LOD) cloud, there are still several ongoing problems in this area. As LOD are modeled as resource description framework (RDF) graphs, we cannot directly adopt existing solutions from database management or information retrieval systems. This study addresses the issue of efficient LOD annotation organization, retrieval, and evaluation. We propose a hybrid strategy between the index and distributed approaches based on KGE to increase join query performance. Using a learned semantic index structure for semantic search, we can efficiently discover interlinked data distributed across multiple resources. Because this approach rapidly prunes numerous false hits, the performance of join query processing is remarkably improved. The performance of the proposed index structure is compared with some existing methods on real RDF datasets. As a result, the proposed indexing method outperforms existing methods due to its ability to prune a lot of unnecessary data scanned during semantic searching. |
Starting Page | 6713 |
e-ISSN | 20763417 |
DOI | 10.3390/app12136713 |
Journal | Applied Sciences |
Issue Number | 13 |
Volume Number | 12 |
Language | English |
Publisher | MDPI |
Publisher Date | 2022-07-02 |
Access Restriction | Open |
Subject Keyword | Applied Sciences Information and Library Science Semantic Search Learned Semantic Index Knowledge Graph Embedding Linked Open Data Clustering Techniques |
Content Type | Text |
Resource Type | Article |