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Deep Learning Empowered Cybersecurity Spam Bot Detection for Online Social Networks 被引量:2
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作者 Mesfer Al Duhayyim Haya Mesfer Alshahrani +3 位作者 Fahd NAl-Wesabi Mohammed Alamgeer Anwer Mustafa Hilal Mohammed Rizwanullah 《Computers, Materials & Continua》 SCIE EI 2022年第3期6257-6270,共14页
Cybersecurity encompasses various elements such as strategies,policies,processes,and techniques to accomplish availability,confidentiality,and integrity of resource processing,network,software,and data from attacks.In... Cybersecurity encompasses various elements such as strategies,policies,processes,and techniques to accomplish availability,confidentiality,and integrity of resource processing,network,software,and data from attacks.In this scenario,the rising popularity of Online Social Networks(OSN)is under threat from spammers for which effective spam bot detection approaches should be developed.Earlier studies have developed different approaches for the detection of spam bots in OSN.But those techniques primarily concentrated on hand-crafted features to capture the features of malicious users while the application of Deep Learning(DL)models needs to be explored.With this motivation,the current research article proposes a Spam Bot Detection technique using Hybrid DL model abbreviated as SBDHDL.The proposed SBD-HDL technique focuses on the detection of spam bots that exist in OSNs.The technique has different stages of operations such as pre-processing,classification,and parameter optimization.Besides,SBD-HDL technique hybridizes Graph Convolutional Network(GCN)with Recurrent Neural Network(RNN)model for spam bot classification process.In order to enhance the detection performance of GCN-RNN model,hyperparameters are tuned using Lion Optimization Algorithm(LOA).Both hybridization of GCN-RNN and LOA-based hyperparameter tuning process make the current work,a first-of-its-kind in this domain.The experimental validation of the proposed SBD-HDL technique,conducted upon benchmark dataset,established the supremacy of the technique since it was validated under different measures. 展开更多
关键词 CYBERSECURITY spam bot data classification social networks TWITTER deep learning
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网络水军识别研究 被引量:57
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作者 莫倩 杨珂 《软件学报》 EI CSCD 北大核心 2014年第7期1505-1526,共22页
网络水军识别关键技术已成为当前数据挖掘领域最为活跃的研究之一.如何挖掘海量用户信息中潜藏的网络水军特征与行为模式,从而发现网络水军,以维护良好的网络环境,保障合理的网络秩序,已成为一项十分具有挑战性的工作.对比传统与新型网... 网络水军识别关键技术已成为当前数据挖掘领域最为活跃的研究之一.如何挖掘海量用户信息中潜藏的网络水军特征与行为模式,从而发现网络水军,以维护良好的网络环境,保障合理的网络秩序,已成为一项十分具有挑战性的工作.对比传统与新型网络水军识别研究,从识别特征角度对近几年内网络水军识别研究进展进行综述,对其关键技术和效用评价进行了前沿概括、比较和分析,并对网络水军识别中有待深入研究的难点和发展趋势进行了展望. 展开更多
关键词 网络水军识别 社交网络水军 电子商务水军 邮件水军 水军机器人
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