Grasshopper-Based Detection of Fake Social Media Profiles

Authors

  • Nadir Mahammed Ecole Superieure en Informatique 08 May 1945 - Sidi Bel Abbès image/svg+xml
  • Imène Saidi Ecole Superieure en Informatique 08 May 1945 - Sidi Bel Abbès image/svg+xml
  • Khayra Bencherif Ecole Superieure en Informatique 08 May 1945 - Sidi Bel Abbès image/svg+xml
  • Miloud Khaldi Ecole Superieure en Informatique 08 May 1945 - Sidi Bel Abbès image/svg+xml
  • Mahmoud Fahsi Université Djilali de Sidi Bel Abbès image/svg+xml
  • Zouaoui Guellil Hassiba Benbouali University of Chlef image/svg+xml

DOI:

https://doi.org/10.4108/eetsis.7159

Keywords:

Online social network, fake profiles detection, nature-inspired algorithm, grasshopper optimization algorithm, machine learning

Abstract

The proliferation of fake profiles on social media platforms presents a growing challenge for digital ecosystems, where the detection of such profiles is critical to maintaining the integrity of online environments. This paper introduces a hybrid approach that integrates the Grasshopper Optimization Algorithm with various Machine Learning classifiers, including Support Vector Machine, Naive Bayes, and Random Forest. The nature-inspired metaheurisitic used is employed to optimize key hyperparameters of these classifiers, thereby enhancing their performance in detecting fake profiles. The proposed method is evaluated on a well defined balanced dataset, demonstrating significant improvements in classification performance, particularly in terms of accuracy, precision, recall, and F1-score. The results suggest that the proposed hybrid approach can effectively address the challenges associated with balanced and imbalanced datasets in fake profile detection. Furthermore, the study discusses potential directions for improving scalability and applying the approach to larger and more dynamic datasets in the future.

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Published

24-07-2025

How to Cite

1.
Mahammed N, Saidi I, Bencherif K, Khaldi M, Fahsi M, Guellil Z. Grasshopper-Based Detection of Fake Social Media Profiles. EAI Endorsed Scal Inf Syst [Internet]. 2025 Jul. 24 [cited 2025 Sep. 1];12(4). Available from: https://publications.eai.eu/index.php/sis/article/view/7159