动态网络中时间链路预测的自适应多重非负矩阵分解

Kai Lei, Meng Qin, B. Bai, Gong Zhang
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引用次数: 17

摘要

移动性、拓扑和流量的预测是提高各种网络系统性能的有效技术,一般可以表示为时间链路预测问题。本文从网络嵌入的角度出发,提出了一种新的自适应多元非负矩阵分解(AM-NMF)方法来解决这一问题。该方法在非负矩阵分解(NMF)框架下,将动态网络嵌入到一个低维隐藏空间中,在该空间中,不同网络快照的特征得到了全面的保留。特别的是,我们引入了一种新的自适应参数来自动调整均匀模型中不同项的相对贡献,从而有效地融合了不同时间片的隐藏信息。因此,通过对共享隐藏空间进行NMF逆处理,可以生成未来网络拓扑的预测结果。并给出了相应的求解策略,保证了算法的收敛性。举例说明,新模型将应用于各种网络数据集,如人类移动网络、车辆移动网络、无线网状网络和数据中心网络。实验结果表明,我们的方法在非加权和加权网络的时间链路预测方面都优于其他一些最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Multiple Non-negative Matrix Factorization for Temporal Link Prediction in Dynamic Networks
The prediction of mobility, topology and traffic is an effective technique to improve the performance of various network systems, which can be generally represented as the temporal link prediction problem. In this paper, we propose a novel adaptive multiple non-negative matrix factorization (AM-NMF) method from the view of network embedding to cope with such problem. Under the framework of non-negative matrix factorization (NMF), the proposed method embeds the dynamic network into a low-dimensional hidden space, where the characteristics of different network snapshots are comprehensively preserved. Especially, our new method can effectively incorporate the hidden information of different time slices, because we introduce a novel adaptive parameter to automatically adjust the relative contribution of different terms in the uniform model. Accordingly, the prediction result of future network topology can be generated by conducting the inverse process of NMF form the shared hidden space. Moreover, we also derive the corresponding solving strategy whose convergence can be ensured. As an illustration, the new model will be applied to various network datasets such as human mobility networks, vehicle mobility networks, wireless mesh networks and data center networks. Experimental results show that our method outperforms some other state-of-the-art methods for the temporal link prediction of both unweighted and weighted networks.
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