Cleaning Big Data Streams: A Systematic Literature Review

Author:

Alotaibi Obaid12ORCID,Pardede Eric2ORCID,Tomy Sarath3

Affiliation:

1. Department of Computer Science, College of Science and Arts, Sajir Campus, Shaqra University, Sajir City 11951, Saudi Arabia

2. Department of Computer Science and Information Technology, School of Engineering and Mathematical Sciences, Melbourne Campus, La Trobe University, Melbourne, VIC 3086, Australia

3. Department of Computer Science and Information Technology, School of Engineering and Mathematical Sciences, Bendigo Campus, La Trobe University, Bendigo, VIC 3552, Australia

Abstract

In today’s big data era, cleaning big data streams has become a challenging task because of the different formats of big data and the massive amount of big data which is being generated. Many studies have proposed different techniques to overcome these challenges, such as cleaning big data in real time. This systematic literature review presents recently developed techniques that have been used for the cleaning process and for each data cleaning issue. Following the PRISMA framework, four databases are searched, namely IEEE Xplore, ACM Library, Scopus, and Science Direct, to select relevant studies. After selecting the relevant studies, we identify the techniques that have been utilized to clean big data streams and the evaluation methods that have been used to examine their efficiency. Also, we define the cleaning issues that may appear during the cleaning process, namely missing values, duplicated data, outliers, and irrelevant data. Based on our study, the future directions of cleaning big data streams are identified.

Publisher

MDPI AG

Subject

Computer Science (miscellaneous)

Reference91 articles.

1. Erl, T., Khattak, W., and Buhler, P. (2016). Big Data Fundamentals: Concepts, Drivers & Techniques, Prentice Hall Press.

2. Big data stream analysis: A systematic literature review;Kolajo;J. Big Data,2019

3. Han, J., Pei, J., and Tong, H. (2022). Data Mining: Concepts and Techniques, Morgan kaufmann.

4. A review on data cleansing methods for big data;Ridzuan;Procedia Comput. Sci.,2019

5. PRISMA (2023, July 01). PRISMA Flow Diagram. Available online: http://www.prisma-statement.org.

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