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A Novel Link Prediction Method for Opportunistic Networks Based on Random Walk and a Deep Belief Network

机译:基于随机散步的机会网络的一种新颖的链路预测方法和深度信仰网络

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摘要

Link prediction is to estimate the possibility of future links among nodes by utilizing known information such as network topology and node attributes. According to the characteristics of opportunistic networks (topological time-variation, node mobility and intermittent connections), this paper proposes a novel link prediction approach (IRWR-DBN) for opportunistic networks that is based on random walk and a deep belief network. First, we reconstruct the Markov probability transition matrix and define a similarity index & x2013; improved random walk with restart (IRWR). Second, we divide the opportunistic network into network snapshots. Then, the similarity matrix of each snapshot is calculated by using the IRWR index to construct a sample set. Finally, a predictive model is constructed based on a deep belief network which extracts the time-domain characteristics in the process of dynamic evolution of the opportunistic network. The experimental results on the ITC and MIT Reality datasets show that compared with methods, such as the similarity-based index (CN, AA, Katz, RA, RWR), convolutional neural network, and recurrent neural network, the proposed method is more accurate and stable.
机译:链路预测是通过利用诸如网络拓扑和节点属性的已知信息来估计节点之间将来链接的可能性。根据机会性网络的特征(拓扑时间变化,节点移动性和间歇连接),本文提出了一种基于随机步行和深度信仰网络的机会网络的新颖的链路预测方法(IRWR-DBN)。首先,我们重建马尔可夫概率转换矩阵并定义相似性指数和X2013;用重启(IRWR)改进随机散步。其次,我们将机会主义网络划分为网络快照。然后,通过使用IRWR索引来构建样本集来计算每个快照的相似性矩阵。最后,基于深度信念网络构建预测模型,该网络在机会网络的动态演化过程中提取了时域特征。 ITC和MIT现实数据集的实验结果表明,与方法相比,如相似性的指数(CN,AA,KATZ,RA,RWR),卷积神经网络和经常性神经网络,所提出的方法更准确稳定。

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