基于异质模体特征的社交机器人识别

Social robot recognition based on heterogeneous motif features

  • 摘要: 识别社交网络中的机器人账户,可以保护社交网络运营商及其用户免受各种恶意活动的侵害。现有的基于网络结构的社交机器人识别方法,忽略了真实网络多数是节点或连边性质具有差异的异质网络,无法充分利用不同类型节点或连边的拓扑结构信息,使得在识别社交机器人时存在一定的局限性。基于模体理论融合节点标签信息,提出一种基于异质模体特征的社交机器人识别方法,提取更加细节的局部信息来区分人类用户和机器人用户。所提方法与其他现有方法相比,在ACC、Precision、Recall和F1这4个指标上均有所提升,其中ACC指标提高了17.3%,Precision指标提高了23.3%,同时相较于其他方法,在面对标签噪声时展现出更强的鲁棒性。该识别方法可以更精确地识别社交机器人,从而有效防止恶意机器人对社交网络平台进行攻击、传播虚假信息或进行欺诈行为。

     

    Abstract: Identifying bot accounts in social networks can protect social network operators and their users from a variety of malicious activities. The existing social robot recognition methods based on network structure ignore that most of the real networks are heterogeneous networks with different node or edge properties, and cannot make full use of the topological information of different types of nodes or edge, resulting in certain limitations in the identification of social robots. Based on motif theory, a social robot recognition method based on heterogeneous motif features is proposed to extract more detailed local information for distinguishing human users from robot users. Compared with other existing methods, the proposed method has improved in ACC (Accuracy), Precision, Recall and F1, among which ACC has increased by 17.3% and Precision by 23.3%. At the same time, the experimental results show that the proposed method exhibits stronger robustness in the face of label noise compared with other methods. This identification method can identify social robots more accurately, so as to effectively prevent malicious robots from attacking social network platforms and spreading false information or committing fraud.

     

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