Abstract
Considering the ever-increasing size and complexity of social networks, develo** methods to extract meaningful knowledge and information from users’ vast amounts of data is crucial. Identifying influencers on social networks is one of the essential investigations on these networks and has many applications in marketing, advertising, sociology, behavior analysis, and security issues. In recent years, many studies have been conducted on analyzing and identifying influencers on social networks. Therefore, in this article, a Systematic Literature Review (SLR) has been performed on previous studies about the methods of identifying influencers. To this end, we review the definitions of influencers, the datasets used for evaluation purposes, the methods of identifying influencers, and the evaluation techniques. Furthermore, the quality assessment of the recently published papers also has been performed in different aspects to find whether research about identifying influencers has progressed. Finally, trends and opportunities for future studies about influencers’ identification are presented. The result of this SLR shows that the quantity and quality of articles in the field of identifying influencers in social networks are growing and progressive, which shows this field is a dynamic and active area of research.
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Seyed Farid Seyfosadat: Concept, Design, Methodology, Evaluation. Reza Ravanmehr: Concept, Verification, Validation, Editing.
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Appendix
Appendix
Publication venue | Type | Number | Impact factor |
---|---|---|---|
ACM computing surveys (CSUR) | Journal article | 1 | 14.32 |
ACM transactions on internet technology (TOIT) | Journal article | 1 | 3.135 |
Applied computing and informatics | Journal article | 1 | 6.825 |
Applied intelligence | Journal article | 2 | 1.58 |
Applied sciences | Journal article | 1 | 2.679 |
Applied soft computing | Journal article | 1 | 8.263 |
Artificial intelligence review | Journal article | 5 | 9.588 |
Behaviour & information technology | Journal article | 1 | 3.086 |
Big data mining and analytics | Journal article | 1 | 3.7 |
Chaos, solitons & fractals | Journal article | 1 | 9.922 |
Chinese journal of electronics | Journal article | 1 | 0.4 |
Cluster computing | Journal article | 1 | 2.303 |
Communications in nonlinear science and numerical simulation | Journal article | 2 | 4.26 |
Complexity | Journal article | 1 | 2.833 |
Computational social networks | Journal article | 1 | 3.269 |
Computer science review | Journal article | 1 | 8.757 |
Computers & industrial engineering | Journal article | 1 | 7.180 |
Computing | Journal article | 1 | 2.420 |
Concurrency and computation: practice and experience | Journal article | 1 | 1.831 |
Data & knowledge engineering | Journal article | 2 | 1.5 |
Digital communications and networks | Journal article | 1 | 6.797 |
Entropy | Journal article | 2 | 2.738 |
European journal of management and business economics | Journal article | 1 | 2.816 |
Expert systems with applications | Journal article | 5 | 8.665 |
Future generation computer systems | Journal article | 3 | 7.307 |
Future internet | Journal article | 1 | 3.638 |
Heliyon | Journal article | 1 | 2.85 |
IEEE access | Journal article | 5 | 3.476 |
IEEE transactions on computational social systems | Journal article | 1 | 5.357 |
IEEE transactions on knowledge and data engineering | Journal article | 2 | 6.977 |
IEEE transactions on multimedia | Journal article | 1 | 6.513 |
IEEE transactions on network science and engineering | Journal article | 1 | 3.894 |
Information fusion | Journal article | 1 | 12.975 |
Information processing & management | Journal article | 4 | 7.466 |
Information sciences | Journal article | 3 | 8.233 |
Journal of ambient intelligence and humanized computing | Journal article | 1 | 3.662 |
Journal of big data | Journal article | 1 | 10.835 |
Journal of computer science and technology | Journal article | 1 | 1.871 |
Journal of media business studies | Journal article | 1 | 2.059 |
Journal of network and computer applications | Journal article | 1 | 7.574 |
Journal of retailing and consumer services | Journal article | 2 | 10.972 |
Journal of the association for information science and technology | Journal article | 1 | 3.275 |
Knowledge and information systems | Journal article | 1 | 2.531 |
Knowledge-based systems | Journal article | 4 | 8.139 |
Mathematics | Journal article | 2 | 2.592 |
Neurocomputing | Journal article | 3 | 5.779 |
Online social networks and media | Journal article | 2 | 4.42 |
Physica A: statistical mechanics and its applications | Journal article | 10 | 3.778 |
SN applied sciences | Journal article | 1 | 2.7 |
Social network analysis and mining | Journal article | 1 | 3.868 |
Social networks | Journal article | 1 | 4.144 |
Soft computing | Journal article | 1 | 3.732 |
Sustainability | Journal article | 1 | 3.251 |
21st International conference on enterprise information systems | Conference Proceedings | 1 | – |
2015 International conference on behavioral, economic and socio-cultural computing (BESC) | Conference Proceedings | 1 | – |
2016 2nd IEEE International conference on computer and communications (ICCC) | Conference Proceedings | 1 | – |
2016 conference on technologies and applications of artificial intelligence (TAAI) | Conference Proceedings | 1 | – |
2016 IEEE/ACM International conference on advances in social networks analysis and mining (ASONAM) | Conference Proceedings | 1 | – |
2016 International conference on computing, analytics and security trends (CAST) | Conference Proceedings | 1 | – |
2017 16th IEEE International conference on machine learning and applications (ICMLA) | Conference Proceedings | 1 | – |
2019 IEEE Intl Conf on dependable, autonomic and secure computing, Intl Conf on Pervasive Intelligence and Computing, Intl Conf on Cloud and Big Data Computing, Intl Conf on Cyber Science and Technology Congress (DASC/PiCom/CBDCom/CyberSciTech) | Conference Proceedings | 1 | – |
2019 International Conference on Advanced Science and Engineering (ICOASE) | Conference Proceedings | 1 | – |
2020 International Conference on Computational Science and Computational Intelligence (CSCI) | Conference Proceedings | 1 | – |
2021 3rd East Indonesia Conference on Computer and Information Technology (EIConCIT) | Conference Proceedings | 1 | – |
2021 International Conference on Software Engineering & Computer Systems and 4th International Conference on Computational Science and Information Management (ICSECS-ICOCSIM) | Conference Proceedings | 1 | – |
Companion Proceedings of The 2019 World Wide Web conference | Conference Proceedings | 1 | – |
Conference on e-Business, e-Services, and e-Society | Conference Proceedings | 1 | – |
International conference on advanced intelligent systems and informatics | Conference Proceedings | 1 | – |
International conference on big data analytics and knowledge discovery | Conference Proceedings | 1 | – |
International conference on smart objects and technologies for social good | Conference Proceedings | 1 | – |
International conference on smart trends for information technology and computer communications | Conference Proceedings | 1 | – |
International workshop on artificial intelligence and pattern recognition | Conference Proceedings | 1 | – |
OTM Confederated International conferences on the move to meaningful internet systems"" | Conference Proceedings | 1 | – |
Proceedings of the 9th International conference on web intelligence, mining and semantics | Conference Proceedings | 1 | – |
Proceedings of the 29th ACM International conference on information & knowledge management | Conference Proceedings | 1 | – |
Proceedings of the 54th Hawaii International conference on system sciences | Conference Proceedings | 1 | – |
Proceedings of the 2017 ACM International conference on management of data | Conference Proceedings | 1 | – |
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Seyfosadat, S.F., Ravanmehr, R. Systematic literature review on identifying influencers in social networks. Artif Intell Rev 56 (Suppl 1), 567–660 (2023). https://doi.org/10.1007/s10462-023-10515-2
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DOI: https://doi.org/10.1007/s10462-023-10515-2