Assessing Large-Scale, Cross-Domain Knowledge Bases for Semantic Search
Journal: Mehran University Research Journal of Engineering and Technology (Vol.39, No. 3)Publication Date: 2020-07-01
Authors : Aatif Ahmad Khan; Sanjay Kumar Malik;
Page : 595-602
Keywords : Semantic Search; Knowledge Base; Cross-Domain Dataset; RDF Triples; Linked Open Data Cloud;
Abstract
Semantic Search refers to set of approaches dealing with usage of Semantic Web technologies for information retrieval in order to make the process machine understandable and fetch precise results. Knowledge Bases (KB) act as the backbone for semantic search approaches to provide machine interpretable information for query processing and retrieval of results. These KB include Resource Description Framework (RDF) datasets and populated ontologies. In this paper, an assessment of the largest cross-domain KB is presented that are exploited in large scale semantic search and are freely available on Linked Open Data Cloud. Analysis of these datasets is a prerequisite for modeling effective semantic search approaches because of their suitability for particular applications. Only the large scale, cross-domain datasets are considered, which are having sizes more than 10 million RDF triples. Survey of sizes of the datasets in triples count has been depicted along with triples data format(s) supported by them, which is quite significant to develop effective semantic search models.
Other Latest Articles
- A Multi-blocked Image Classifier for Deep Learning
- Artificial Algae Algorithm with Multi-Light Source Movement for Economic Dispatch of Thermal Generation
- Designing Hydel Power Generation Capacity using a Mini/Micro Hydro Power Plant at Left Bank Outfall Drain Drainage System, near Goth Ahori, Jhuddo, Sindh
- Psychological, ethical and deontological needs of the patients
Last modified: 2020-11-15 03:13:02