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作 者:张雪芹[1,2] 刘岗 王智能 罗飞 吴建华[2] ZHANG Xueqin;LIU Gang;WANG Zhineng;LUO Fei;WU Jianhua(School of Information Science and Engineering,East China University of Science and Technology,Shanghai 200237,China;Shanghai Key Laboratory of Computer Software Evaluating and Testing,Shanghai 201112,China)
机构地区:[1]华东理工大学信息科学与工程学院,上海200237 [2]上海市计算机软件评测重点实验室,上海201112
出 处:《清华大学学报(自然科学版)》2024年第4期688-699,共12页Journal of Tsinghua University(Science and Technology)
基 金:国家自然科学基金项目(51975213)。
摘 要:准确地预测社交网络中的信息扩散节点可以对谣言、计算机病毒等不良信息的传播以及信息泄露做到早检测、早溯源和早抑制。为了提高微观扩散预测精度,该文提出了一个基于多特征融合和深度学习的微观信息扩散预测通用框架(MFFDLP)。为了获取信息扩散的时序特征,基于信息扩散序列和社交网络图,采用门控循环神经网络提取局部时序特征和全局时序特征,并融合形成信息扩散序列表征;为了获取用户交互行为和兴趣爱好的动态表示,根据历史信息构建信息扩散图,使用级联图注意力网络提取信息扩散子图中节点特征和边特征,并通过嵌入查找,融合形成当前信息扩散序列中相应节点的动态扩散表征;使用双多头注意力机制,进一步捕获静态和动态扩散特征的上下文信息,实现了高精度微观扩散预测。在3个公共数据集上的对比实验结果表明:所提方法优于对比方法,在微观扩散预测的精度上最高提高了9.98%。[Objective] Deep learning methods have been widely employed to enhance microscopic diffusion prediction in social networks.However,the existing methods have the problem of insufficient extraction of features in the information dissemination process.For example,these methods do not consider the impact of the propagation chain of the most recently infected nodes on the subsequent propagation of the message or the impact of changes in the neighboring nodes on the propagation path of the message.Therefore,the prediction accuracy is not high.To solve the above problems,describe the information diffusion process from multiple perspectives,and discover more hidden features,this paper proposes a microscopic diffusion prediction framework — multifeature fusion and deep learning for prediction(MFFDLP).[Methods] The microscopic diffusion prediction framework is divided into three main parts:extracting the static features from the network topology and the information diffusion sequence,capturing dynamic diffusion characteristics from the information diffusion graph,and predicting the next infected node.(1) First,node embedding and node structure context are extracted from historical friendship graphs and information diffusion sequences.The gate recurrent unit(GRU) is applied to mine the deep global temporal features from the connected vectors.To further enhance the role of the recently infected node,GRU is used to mine the local temporal features from the structure context of the node.These two features are fused to form the information diffusion sequence features.(2) Capture dynamic diffusion characteristics from the information diffusion graph.These features represent changes in users' interaction or interest.An information diffusion graph is built based on the historical information diffusion sequence.The diffusion graph is then divided into subgraphs in chronological order.A graph attention network is applied to capture the node features from each subgraph,and the edge features are aggregated from the node features.Usi
关 键 词:社交网络 微观扩散预测 循环神经网络 图注意力网络 多头注意力机制
分 类 号:TP391.1[自动化与计算机技术—计算机应用技术]
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