A Review of Social Network Popularity Prediction Based on Deep Learning
DOI:
https://doi.org/10.71222/g5p62613Keywords:
social, online content, popularity prediction, information dissemination, deep learningAbstract
This paper explores the role of deep learning in predicting the popularity of social network content, with a focus on improving prediction accuracy through the integration of various data types, such as text, images, and user behavior. Traditional methods of predicting content popularity often fall short when handling large-scale, unstructured data, making deep learning a crucial advancement. The paper discusses the benefits of multi-modal data integration, where combining different types of data leads to more robust models capable of capturing the complexities of user engagement and content virality. Additionally, the integration of reinforcement learning and real-time prediction systems is highlighted as an emerging direction, enabling models to adapt and improve based on real-time feedback. As deep learning continues to evolve, it offers significant potential for more accurate, scalable, and adaptive models that can respond to changing trends and enhance content dissemination strategies across social media platforms.
References
1. M. Vogt, "An overview of deep learning techniques," at - Automatisierungstechnik, vol. 66, no. 9, 2018, doi: 10.1515/auto-2018-0076.
2. S. Kakar and M. Mehrotra, "A Review of Critical Research Areas under Information Diffusion in Social Networks," Int. J. Adv. Comput. Sci. Appl. (IJACSA), vol. 11, no. 4, 2020, doi: 10.14569/IJACSA.2020.0110454.
3. S. Fangfang, L. Fuyang, W. Zhenyu, J. Peiyu, W. Mengyi, and S. Huifang, "Deep Learning Social Network Access Control Model Based on User Preferences," CMES: Comput. Model. Eng. Sci., vol. 1, 2024, doi: 10.32604/CMES.2024.047665.
4. Y. Gao, "Constructing the social network prediction model based on data mining and link prediction analysis," Lib. Hi Tech, vol. 38, no. 2, 2020, doi: 10.1108/LHT-11-2018-0179.
5. E. M. AlAli, Y. Hajji, S. Yahia, M. Hleili, A. M. Alanzi, A. H. Laatar, and M. Atri, "Solar Energy Production Forecasting Based on a Hybrid CNN-LSTM-Transformer Model," Math., vol. 11, no. 3, 2023, doi: 10.3390/MATH11030676.
6. E. Sanjana, M. S. Sagar, D. Nalla, B. Meghana, and A. Katragadda, "Detecting Malicious Apps in Android Devices using SVM, Random Forest & Decision Trees," Int. J. Recent Technol. Eng. (IJRTE), vol. 9, no. 1, 2020, doi:10.35940/ijrte.a2418.059120
7. K. Evans, E. Stewart, and G. Foster, "Comprehensive Review of Cloud-Driven Machine Learning: A Comparative Analysis of AWS, Azure, and Google Cloud," Yearb. Cloud Comput., vol. 2025, doi: 10.36227/techrxiv.173611042.27406103/v1
8. R. Alagarsamy, A. Arunpraksh, S. Ganapathy, A. Rajagopal, and R. Kavitha, "A fuzzy content recommendation system using similarity analysis, content ranking and clustering," J. Intell. Fuzzy Syst., vol. 6, 2021, doi: 10.3233/JIFS-210246.
9. N. Partheeban, R. Radhika, A. M. Ali, and N. Sankar, "An Intelligent Content Recommendation System for E-Learning Using Social Network Analysis," J. Comput. Theor. Nanosci., vol. 15, no. 8, 2018, doi: 10.1166/jctn.2018.7504.
10. I. Kompatsiaris, S. Diplaris, D. Corney, and J. Spangenberg, "Real-time social media indexing and search," in IBC2014 Conf., 2014, doi:10.1049/IB.2014.0014
Downloads
Published
Issue
Section
License
Copyright (c) 2025 Bo Fan (Author)

This work is licensed under a Creative Commons Attribution 4.0 International License.