A novel approach for efficient stance detection in online social networks with metaheuristic optimization *

2021
In the 19th and 20th centuries, social networks have been an important topic in a wide range of fields from sociology to education. However, with the advances in computer technology in the 21st century, significant changes have been observed in social networks, and conventional networks have evolved into online social networks. The size of these networks, along with the large amount of data they generate, has introduced new social networking problems and solutions. Social network analysis methods are used to understand social network data. Today, several methods are implemented to solve various social network analysis problems, albeit with limited success in certain problems. Thus, the researchers develop new methods or recommend solutions to improve the performance of the existing methods. In the present paper, a novel optimization method that aimed to classify social network analysis problems was proposed. The problem of stance detection, an online social network analysis problem, was first tackled as an optimization problem. Furthermore, a new hybrid meta-heuristic optimization algorithm was proposed for the first time in the current study, and the algorithm was compared with various methods. The analysis of the findings obtained with accuracy, precision, recall, and F-measure classification metrics demonstrated that our method performed better than other methods.
TECHNOLOGY IN SOCIETY
卷号:64
ISSN:0160-791X
收录类型
SSCI
发表日期
2021
学科领域
循证社会学
国家
土耳其
语种
英语
DOI
10.1016/j.techsoc.2020.101501
EISSN
1879-3274
被引频次(WOS)
1
被引更新日期
2022-01
来源机构
Munzur University Firat University
关键词
Stance detection Metaheuristic optimization Online social network problems Online social network analysis Data mining