Application of Data Mining in Social Media, 2nd Edition

A special issue of Electronics (ISSN 2079-9292). This special issue belongs to the section "Computer Science & Engineering".

Deadline for manuscript submissions: 15 June 2026 | Viewed by 707

Special Issue Editors


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Guest Editor
Department of Data Science, Sejong University, Seoul 05006, Republic of Korea
Interests: data science; topic modeling; text mining; information retrieval; machine learning; natural language processing; big data analysis; data mining; artificial intelligence
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Guest Editor
University Paris-Est Creteil Images, Signals and Intelligent Systems Laboratory 61 avenue du Général de Gaulle, 94010 Creteil, France
Interests: artificial intelligence; soft grid; Internet of Things
Special Issues, Collections and Topics in MDPI journals

Special Issue Information

Dear Colleagues,

The growing interest of people around the globe in social networking sites, streaming platforms, and other digital platforms has made the Internet a necessary tool for everyday tasks such as commerce, schooling, leisure activities, and interaction. Nowadays, individuals using the internet have almost limitless accessibility to distribute content. This creates an excellent chance to utilize this beneficial data by turning it into knowledge using the right methods. In such a scenario, data mining techniques become powerful instruments for assisting consumers in finding the most appropriate online content, goods, or services by investigating a variety of social media factors, including user behaviour, communities, network topologies, informational dispersion, and a lot more. However, the vast volumes of social networking information and the extremely complicated and constantly changing social behaviour of consumers have resulted in the development of massive quantities of high-dimension, unreliable, ambiguous, and noisy data from such platforms. Consequently, demonstrating and analysing this enormous ambiguity of electronic content and offering excellent services to customers seems to be very difficult.

Soft computing approaches (i.e., fuzzy logic, machine learning, deep learning, etc.) can play a considerably vital part in tackling the above-mentioned issues because of their ability to cope with data unpredictability and ambiguity. These approaches are not only used in traditional social media analysis but also show effectiveness in distinct areas such as the detection of hate speech, misinformation, sentiment analysis, and abusive behaviour. The topics of interest include, but are not limited to, the following:

  1. Social media analysis using data mining;
  2. Machine learning models for data mining;
  3. Deep learning models for data mining;
  4. The intersection of computer vision and artificial intelligence with data mining;
  5. Soft computing and modelling in data mining;
  6. Applications of data mining in hate speech detection;
  7. Misinformation and abusive behaviour detection using data mining;
  8. Sentiment analysis techniques in social media using data mining;
  9. Data mining approaches for social media in healthcare;
  10. Role of data mining in analysing user behaviour on social media platforms.

This Special Issue offers an opportunity for scientists and professionals from computer science, data mining, ubiquitous computing, and social sites to exchange concepts, novel solutions, and strategies for advancing the smart analysis of data and online handling of data. We invite the submission of unpublished, original work that applies any advanced techniques and methodologies to all areas around the subject matter of this Special Issue.

Dr. Junaid Rashid
Prof. Dr. Patrick Siarry
Guest Editors

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Keywords

  • data mining
  • social media analysis
  • soft computing
  • network science
  • natural language processing
  • text mining
  • information retrieval
  • computational intelligence
  • sentiment analysis
  • machine learning
  • healthcare data mining
  • hate speech detection
  • misinformation detection
  • abusive behavior detection

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Published Papers (1 paper)

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Research

41 pages, 16437 KB  
Article
Development of Crawling and Knowledge Graph Technologies for Tracking Organized Sexual Offenses on Social Media X
by Hyeon-Woo Lee, Su-Bin Lee and Jiyeon Kim
Electronics 2026, 15(1), 162; https://doi.org/10.3390/electronics15010162 - 29 Dec 2025
Cited by 1 | Viewed by 436
Abstract
The high accessibility and interconnectedness of social media platforms have led to their increasing exploitation as tools for criminal activity. A notable example of such digital sexual offenses is the “Nth Room” case, in which sexually exploitative content and illegal recordings were unlawfully [...] Read more.
The high accessibility and interconnectedness of social media platforms have led to their increasing exploitation as tools for criminal activity. A notable example of such digital sexual offenses is the “Nth Room” case, in which sexually exploitative content and illegal recordings were unlawfully distributed on platforms such as X, Telegram, and Discord. Despite amendments to legislations, including the Sexual Violence Punishment Act and Youth Protection Act, aimed at preventing the recurrence of incidents, these crimes continue to persist. Perpetrators employ tactics such as the repeated creation and deletion of accounts, which complicate efforts to track and apprehend them. Consequently, there is an urgent need to develop advanced cyber investigation technologies capable of effectively monitoring sexual crimes posted on social media. This study aimed to propose a novel cyber investigation technology designed to trace criminal organizations by collecting tweets related to sexual crimes from X, which is the most frequently used social media platform for such content in Korea, and subsequently constructing a knowledge graph. Slang terms commonly associated with sexual crimes on X were employed as search keywords to collect relevant tweets. The knowledge graph is then generated based on three key elements extracted from the tweets: hashtags, words, and URL/invite codes. This graph serves as a tool for tracking the criminal networks involved in the distribution of sexually exploitative content and unauthorized recordings. Furthermore, to enhance tracking efficiency, an optimization model was developed to generate knowledge graphs from various analytical perspectives. In this study, to evaluate the performance of the proposed technology, a dataset of 3387 tweets was collected using an X crawler. Knowledge graphs were generated and optimized through both single and combined analyses of the three key elements, demonstrating the effectiveness of the proposed technology in tracking criminal organizations engaged in sexual crimes. Full article
(This article belongs to the Special Issue Application of Data Mining in Social Media, 2nd Edition)
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