4.7 Article

DeepSBD: A Deep Neural Network Model With Attention Mechanism for SocialBot Detection

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出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIFS.2021.3102498

关键词

Feature extraction; Deep learning; Social networking (online); Task analysis; Manuals; Unsolicited e-mail; Image edge detection; Social network analysis; socialbot detection; deep learning; CNN; BiLSTM; data-driven cybersecurity

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This paper introduces a deep neural network model, DeepSBD, for detecting socialbots on OSNs by modeling users' behavior effectively. The model combines bidirectional attention mechanisms and convolutional neural network architectures, outperforming other methods on real-world datasets and showing that imbalanced datasets moderately affect classification accuracy. Additionally, analysis shows that profile characteristics and content behavior are most impactful for detecting socialbots on OSNs.
Online Social Networks (OSNs) are witnessing sophisticated cyber threats, that are generally conducted using fake or compromised profiles. Automated agents (aka socialbots), a category of sophisticated and modern threat entities, are the native of the social media platforms and responsible for various modern weaponized information-related attacks, such as astroturfing, misinformation diffusion, and spamming. Detecting socialbots is a challenging and vital task due to their deceiving character of imitating human behavior. To this end, this paper presents an attention-aware deep neural network model, DeepSBD, for detecting socialbots on OSNs. The DeepSBD models users' behavior using profile, temporal, activity, and content information. It jointly models OSN users' behavior using Bidirectional Long Short Term Memory (BiLSTM) and Convolutional Neural Network (CNN) architectures. It models profile, temporal, and activity information as sequences, which are fed to a two-layers stacked BiLSTM, whereas content information is fed to a deep CNN. We have evaluated DeepSBD over five real-world benchmark datasets and found that it performs significantly better in comparison to the state-of-the-arts and baseline methods. We have also analyzed the efficacy of DeepSBD at different ratios of socialbots and benign users and found that an imbalanced dataset moderately affects the classification accuracy. Finally, we have analyzed the discrimination power of different behavioral components, and it is found that both profile characteristics and content behavior are most impactful, whereas diurnal temporal behavior is the least effective for detecting socialbots on OSNs.

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