Semantic (Big) Data Analysis

an Extensive Literature Review

Authors

Keywords:

Big Data Analysis, Semantic Big Data Analysis, Systematic Review

Abstract

For many years, companies have exploited the data registered in their everyday operations by their transactional systems to obtain useful information and assist in decision-making. To this end, different data analysis techniques and business intelligence strategies have been applied. In recent years, the increase in the volume of data, along with variety in data and the velocity at which data is being produced, has led to the conception of novel processing mechanisms capable of dealing with such huge amount of data, namely, Big Data. The main difficulties associated with Big Data management are linked to its collection and storage, search, sharing, analysis and visualization. The formal underpinnings of Semantic Web technologies enable the automated processing of data through sophisticated inference and reasoning techniques. Semantic technologies have been successfully applied in a number of scenarios for the integration of heterogeneous data, data analysis at the knowledge level, and visualization of Linked Data. In the last few years, a large number of published research papers have explored the benefits in using semantic technologies in data analysis and Big Data. In this paper, we provide a systematic review of the literature in this research area, highlighting the main benefits obtained by the integration of semantic technologies in data analysis and the most challenging aspects that remain to be addressed.

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Author Biographies

Héctor Hiram Guedea Noriega, University of Murcia

Héctor Hiram Guedea Noriega received the B.Eng. and M.Tech. degrees from University of Colima, México. He is currently PhD student in Computer Science at the University of Murcia, Spain. He has more than 10 years of experience in Web development with advanced knowledge in front-end and back-end technologies. He is working as Senior Software Engineer and Digital Management for Secretariats of State of Colima and a software development company from Ontario, Canada. His main research interests are Semantic Web technologies, Digital Marketing, Social Semantic Web and Big Data.

Francisco García Sánchez, University of Murcia

Francisco Garcia-Sanchez received the B.E., M.Sc., and Ph.D. degrees in computer science from the University of Murcia, Murcia, Spain. He is currently an Associate Professor in the Department of Informatics and Systems, University of Murcia. His main research interests are Semantic Web-based applications, Natural Language Processing, Semantic Service-Oriented Architectures, Social Semantic Web, and the application of agent technologies. He has conducted a number of research stays in world-leading research institutes in Ireland, Austria, the United States and Australia, and has published over 60 articles in journals, conferences, and book chapters. He has taken part in various research projects related to the application of Semantic Web technologies to real world challenges as both principal investigator and researcher.

Published

2019-11-02

How to Cite

Guedea Noriega, H. H., & García Sánchez, F. (2019). Semantic (Big) Data Analysis: an Extensive Literature Review. IEEE Latin America Transactions, 17(5), 796–806. Retrieved from https://latamt.ieeer9.org/index.php/transactions/article/view/673