SIAIDec 13, 2023

Adversarial Socialbots Modeling Based on Structural Information Principles

arXiv:2312.08098v128 citationsh-index: 5AAAI
AI Analysis

This addresses the challenge of socialbots spreading misinformation on social networks, offering a novel modeling approach for developing better detectors, though it is incremental in advancing adversarial modeling techniques.

The paper tackles the problem of modeling adversarial socialbots to improve proactive detection by proposing the SIASM framework, which achieves up to 16.32% improvement in network influence and up to 16.29% in sustainable stealthiness against a robust detector.

The importance of effective detection is underscored by the fact that socialbots imitate human behavior to propagate misinformation, leading to an ongoing competition between socialbots and detectors. Despite the rapid advancement of reactive detectors, the exploration of adversarial socialbot modeling remains incomplete, significantly hindering the development of proactive detectors. To address this issue, we propose a mathematical Structural Information principles-based Adversarial Socialbots Modeling framework, namely SIASM, to enable more accurate and effective modeling of adversarial behaviors. First, a heterogeneous graph is presented to integrate various users and rich activities in the original social network and measure its dynamic uncertainty as structural entropy. By minimizing the high-dimensional structural entropy, a hierarchical community structure of the social network is generated and referred to as the optimal encoding tree. Secondly, a novel method is designed to quantify influence by utilizing the assigned structural entropy, which helps reduce the computational cost of SIASM by filtering out uninfluential users. Besides, a new conditional structural entropy is defined between the socialbot and other users to guide the follower selection for network influence maximization. Extensive and comparative experiments on both homogeneous and heterogeneous social networks demonstrate that, compared with state-of-the-art baselines, the proposed SIASM framework yields substantial performance improvements in terms of network influence (up to 16.32%) and sustainable stealthiness (up to 16.29%) when evaluated against a robust detector with 90% accuracy.

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