2025, Vol. 7, Issue 5, Part B
Implementation-based machine learning approaches for effective fake profile detection
Author(s): Deep Shikha and Ruchin Jain
Abstract: The proliferation of fake profiles on social media and online platforms poses significant challenges to user trust, privacy, and platform integrity. These deceptive accounts are often used to manipulate public opinion, spread misinformation, and engage in fraudulent activities, making their detection a critical concern for digital security. Traditional manual detection methods are ineffective at scale, necessitating automated, intelligent solutions. This paper explores implementation-based machine learning approaches for effective fake profile detection. By leveraging vast amounts of user data—including behavioral patterns, textual content, and network interactions—machine learning models can identify subtle anomalies and characteristics that distinguish fake profiles from legitimate users. Various supervised algorithms such as decision trees, support vector machines, random forests, and neural networks are discussed, alongside unsupervised and semi-supervised techniques designed to detect emerging fraudulent behaviors without extensive labeled data. The study emphasizes the importance of robust feature engineering, data preprocessing, and continuous model updates to maintain detection accuracy in the dynamic online environment. The proposed implementation framework integrates real-time monitoring and adaptive learning, ensuring resilience against evolving fake profile strategies. This approach not only enhances detection precision but also helps protect users and maintain the credibility of online platforms. The findings demonstrate that machine learning-driven solutions are indispensable for combating fake profiles effectively in today’s digital age.
DOI: 10.33545/27068919.2025.v7.i5b.1462Pages: 103-108 | Views: 170 | Downloads: 45Download Full Article: Click Here
How to cite this article:
Deep Shikha, Ruchin Jain.
Implementation-based machine learning approaches for effective fake profile detection. Int J Adv Acad Stud 2025;7(5):103-108. DOI:
10.33545/27068919.2025.v7.i5b.1462