1. 南昌航空大学软件学院,江西,南昌,330063
2. 南昌航空大学信息工程学院,江西,南昌,330063
3. 南昌航空大学软件学院,江西,南昌,330063
4. 南昌航空大学信息工程学院,江西,南昌,330063
网络出版:2018-12-25,
纸质出版:2018
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舒坚, 张学佩, 刘琳岚, 等. 基于深度卷积神经网络的多节点间链路预测方法[J]. 电子学报, 2018,46(12):2970-2977.
SHU Jian, ZHANG Xue-pei, LIU Lin-Lan, et al. Multi-nodes Link Prediction Method Based on Deep Convolution Neural Networks[J]. Acta Electronica Sinica, 2018, 46(12): 2970-2977.
舒坚, 张学佩, 刘琳岚, 等. 基于深度卷积神经网络的多节点间链路预测方法[J]. 电子学报, 2018,46(12):2970-2977. DOI: 10.3969/j.issn.0372-2112.2018.12.021.
SHU Jian, ZHANG Xue-pei, LIU Lin-Lan, et al. Multi-nodes Link Prediction Method Based on Deep Convolution Neural Networks[J]. Acta Electronica Sinica, 2018, 46(12): 2970-2977. DOI: 10.3969/j.issn.0372-2112.2018.12.021.
目前,链路预测的研究主要针对拓扑结构变化缓慢的社交网络,集中在单节点对的链路预测.本文针对拓扑变化频繁的机会网络,提出一种基于模式分类的多节点间链路预测方法.该方法基于混沌时间序列理论确定机会网络的切片时间,采用状态图表征网络的拓扑结构,借助深度卷积神经网络在特征提取上的优势,从状态图的演化过程中提取机会网络的结构特征,根据当前特征推断未来链路的演化模式,实现多节点间的链路预测.在ITC(Imote-Traces-Cambridge)真实数据集上的实验结果表明,相比于基于CN(Common Neighbor)、AA(Adamic-Adar)、Katz等预测方法,本文方法具有更好的精度和稳定性.
The current research of link prediction mainly focuses on single node pair link prediction for social network
in which the topology doesn't change frequently. In this paper
for the opportunistic network with frequent topology change
we propose a multi-nodes link prediction method based on pattern classification. This method employs chaotic time series theory to determine the slicing time of opportunistic network
and the topology of the network is depicted by the state diagram. The structural features of opportunistic network can be extracted from the evolution of the state diagram in terms of the advantages of the deep convolution neural network on the feature extraction. The evolution pattern of the future link is inferred from the current features so as to realize the multi-nodes link prediction. The experimental results on the Imote-Traces-Cambridge dataset show that the proposed method has better precision and stability than the prediction methods based on CN (Common Neighbor)
Adamic-Adar and Katz.
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