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Summary
This summary is machine-generated.

This study introduces a federated learning approach combined with Relational Graph Convolutional Neural Networks (RGCN) for detecting malicious social bots. The method effectively handles data heterogeneity, improving detection accuracy in social networks.

Keywords:
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Area of Science:

  • Computer Science
  • Cybersecurity
  • Artificial Intelligence

Background:

  • Malicious social bots threaten social network security by spreading misinformation.
  • Data scarcity and labeling costs hinder centralized bot detection.
  • Federated learning offers a decentralized approach to train models without sharing raw data.

Purpose of the Study:

  • To develop an effective federated social bot detection model.
  • To address data heterogeneity challenges in federated learning for bot detection.
  • To improve the accuracy and efficiency of detecting malicious social bots.

Main Methods:

  • Combined federated learning with Relational Graph Convolutional Neural Networks (RGCN).
  • Utilized class-level cross-entropy loss for local model training to handle class imbalance.
  • Applied knowledge distillation techniques, including a global generator and server-side knowledge integration, to manage data heterogeneity.

Main Results:

  • The proposed approach demonstrated effectiveness in social bot detection within heterogeneous data scenarios.
  • Achieved a 3-10% improvement in detection accuracy compared to baseline methods, especially with higher data heterogeneity.
  • Reached specified accuracy with minimal communication rounds, indicating efficiency.

Conclusions:

  • The federated RGCN model with knowledge distillation is a robust solution for social bot detection.
  • The method successfully mitigates challenges posed by data imbalance and heterogeneity.
  • This approach offers a promising direction for enhancing social network security against malicious bots.