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The identification of important nodes can not only improve the research about the structure and function of the network, but also encourage people to widely promote the application fields such as in infectious disease prevention, power grid fault detection, information dissemination control, etc. Currently, numerous conclusions have been proved on the identification of important nodes based on the static-network, which may lead the general property to be weakened as resistivity and conductivity experience the dynamic evolution of the relationship between network nodes with time. Temporal network analysis can more accurately describe the change of interaction order and interaction relationship of network nodes in the process of spatio-temporal evolution, and establish an appropriate temporal network model, as well as provide scientific theoretical support for the identification of important nodes. In this paper, we pay attention to considering the intensity of adjacent and cross-layer coupling, and propose a super-adjacency matrix (ISAM) method based on inter-layer isomorphism rate to represent the temporal networks and measure the importance of nodes. And at the same time, it is given that the temporal network G has N nodes and T time layers, and the ISAM is a super adjacency matrix composed of intra-layer and inter-layer relationships of adjacent and cross-layer networks, and its size is NT × NT. We focus on the study of the coupling between adjacent and cross-layer networks. The traditional method (SAM) considers the isomorphism rate of adjacent layers as a constant. In the improved method (SSAM), the connection between layers is described by a neighbor topological overlap coefficient. In this paper, the concept of the compatible similarity between cross-layer networks is given first, and then, by combining the projection value of vectors in n-dimensional real space and the contribution value of node neighbors, the inter-layer approximation relation coefficient of temporal network is inferred and analyzed. Generally speaking, it ensures the difference in coupling degree among different nodes in the inter-layer relationship. We calculate the importance of nodes based on eigenvector centrality in temporal network, which presents the importance of node i progressing with time. Simultaneously, the robustness of temporal network is studied by making use of the difference in temporal global efficiency. In the end, the operator of Kendall correlation coefficient is used to evaluate the node ranking effect of different time layers between the eigenvector-based centrality and the difference of temporal global efficiency. According to the experimental results of ISAM, SSAM and SAM on Workspace and Email-eu-core data sets, the average Kendall τ of both ISAM methods considering adjacent and cross-layer network isomorphism rate can be increased by 8.37% and 2.99% respectively. The conclusions show that the measurement method of temporal network inter-layer isomorphism rate is reliable and effective.
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Keywords:
- temporal network /
- inter-layer isomorphism rate /
- eigenvector-based centrality /
- temporal global efficiency
[1] Holme P, Saramäki J 2012 Phys. Rep. 519 97Google Scholar
[2] Albert R, Jeong H, Barabasi 1999 Nature 401 130Google Scholar
[3] Freeman L C 1977 Sociometry 40 35Google Scholar
[4] Borgatti S P, Everett M G 2006 Soc. Networks 28 466Google Scholar
[5] Phillip B 1972 J. Math. Sociol. 2 113Google Scholar
[6] Kitsak M, Gallosl K, Havlin S, Liljeros F, Muchnik L, Stanley H, Makse H 2010 Nat. Phys. 6 888Google Scholar
[7] 胡钢, 徐翔, 张维明, 周鋆 2019 电子学报 47 104Google Scholar
Hu G, Xu X, Zhang W M, Zhou J 2019 Acta Electronica Sin. 47 104Google Scholar
[8] 于会, 刘尊, 李勇军 2013 62 54Google Scholar
Yu K, Liu Z, Li Y J 2013 Acta Phys. Sin. 62 54Google Scholar
[9] 胡钢, 徐翔, 过秀成 2018 浙江大学学报(工学版) 52 1989Google Scholar
Hu G, Xu X, Guo X C 2018 J. Zhejiang Univ.-(Eng. Sci.) 52 1989Google Scholar
[10] 王凯莉, 邬春学, 艾均, 苏湛 2019 68 196402Google Scholar
Wang K L, Wu C X, Ai J, Su Z 2019 Acta Phys. Sin. 68 196402Google Scholar
[11] Li C, Wang L, Sun S W, Xia C Y 2018 Appl. Math. Computation 320 512Google Scholar
[12] Ogura M, Preciado V M 2017 American Control Conference (ACC) Seattle, USA, May 24−26, 2017 p5001
[13] Tang J, Musolesi M, Mascolo C, Latora V 2009 Proceedings of the 2nd ACM Workshop on Online Social Networks Barcelona, Spain, August 17−17, 2009 p31
[14] Zhao G Y, Huang G Y, He H D, Wang Q 2019 IEEE Access 7 1Google Scholar
[15] Li H J, Bu Z, Wang Z, Cao J 2019 IEEE Trans. Ind. Inf. 16 5327Google Scholar
[16] 代萌, 黄生志, 黄强, 王璐, 郭怿 2019 水力发电学报 38 15Google Scholar
Dai M, Huang S Z, Huang Q, Wang L, Guo Y 2019 J. Hydroelectric Eng. 38 15Google Scholar
[17] Qu C Q, Zhan X X, Wang G H, Wu J L, Zhang Z K 2019 Chaos 29 033116Google Scholar
[18] Wang X, Gu H B, Wang Q Y, Lv J H 2019 Sci. Chin. 62 98
[19] Tang D S, Du W B, Shekhtman L, Wang Y J, Havlin S, Cao X B, Yan G 2020 Natl. Sci. Rev. 7 929Google Scholar
[20] Yang L M, Zhang W, Chen Y F 2015 Front. Inf. Technol. Electron. 16 805Google Scholar
[21] Schaub M T, Delvenne J C, Lambiotte R, Barahona M 2019 Phys. Rev. E 99 062308
[22] 李志宇, 梁循, 徐志明, 齐金山, 陈燕方 2017 计算机学报 40 805Google Scholar
Li Z Y, Liang X, Xu Z M, Qi J S, Chen Y F 2017 Chin. J. Comput. 40 805Google Scholar
[23] 郭强, 殷冉冉, 刘建国 2019 电子科技大学学报 48 296Google Scholar
Guo Q, Yin R R, Liu J G 2019 JEST 48 296Google Scholar
[24] 邱路, 黄国妍 2020 69 316138901Google Scholar
Qiu L, Huang G Y 2020 Acta Phys. Sin. 69 316138901Google Scholar
[25] Taylor D, Myers S A, Clauset A, Porter M A 2017 Multiscale Model. Simul. 15 537Google Scholar
[26] 杨剑楠, 刘建国, 郭强 2018 67 048901Google Scholar
Yang J N, Liu J G, Guo Q 2018 Acta Phys. Sin. 67 048901Google Scholar
[27] 朱义鑫, 张凤荔, 秦志光 2014 计算机应用 34 3184Google Scholar
Zhu Y X, Zhang F L, Qin Z G 2014 J. Comput. Appl. 34 3184Google Scholar
[28] Holme P, Saramäki J 2013 Temporal Networks (Heidel-berg: Springer) pp1−2
[29] Hamers L 1989 Inf. Process. Manage. 25 315Google Scholar
[30] Zhou T, Lü L, Zhang Y C 2009 Eur. Phys. J. B 71 623Google Scholar
[31] Van D, Sluis A 1979 LAA 26 265Google Scholar
[32] Latora V, Marchiori M 2007 New J. Phys. 9 188Google Scholar
[33] John T, Mirco M, Cecilia M, Vito L 2009 Proceedings of the 2 nd ACM Workshop on Online Social Networks Barcelona, Spain, August 17, 2009 p31
[34] Kendall M G 1945 Biometrika 33 239Google Scholar
[35] Génois M, Vestergaard C L, Fournet J, Panisson A 2015 Networks Sci. 3 326Google Scholar
[36] Ashwin P, Austin R B, Jure L 2017 In Proceedings of the Tenth ACM International Conference on Web Search and Data Mining Cambridge, United Kingdom, February 6−10, 2017 p601
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图 4 特征向量中心性与单位时间时序全局效率差值的Kendall’s τ结果. 蓝色菱形为ISAM方法, 红色小正方形为SSAM方法, 其他为SAM方法取不同参数的结果 (a) Workspace数据基于层间同构率的超邻接矩阵方法和SSAM及经典超邻接矩阵方法不同参数的Kendall’s τ结果; (b) Email-eu-core数据相应的结果
Figure 4. Results of Kendall’s τ for eigenvector centrality and difference of temporal global efficien- cy. The blue diamond is the ISAM method, the red square is the SSAM method, and the others are the results of the SAM method with different parameters: (a) Result for Workspace by ISAM, SSAM and SAM method; (b) result for Email-eu-core by ISAM, SSAM and SAM method.
表 1 实例网络中节点的特征向量中心性
Table 1. Eigenvector centrality of nodes in temporal network of Fig. 2.
节点编号 1 2 3 4 1 0 2 1 1 2 ∞ 0 3 2 3 1 3 0 2 4 1 2 2 0 表 3 实证网络数据基本统计信息
Table 3. Basic statistical features of Workspace and Email-eu-core.
数据集 节点数 交互
次数边数 时序片段 时间
层数Workspace 92 9827 755 2013.6.24–
2013.7.310 Email-eu-core 986 332334 24929 360 d 12 -
[1] Holme P, Saramäki J 2012 Phys. Rep. 519 97Google Scholar
[2] Albert R, Jeong H, Barabasi 1999 Nature 401 130Google Scholar
[3] Freeman L C 1977 Sociometry 40 35Google Scholar
[4] Borgatti S P, Everett M G 2006 Soc. Networks 28 466Google Scholar
[5] Phillip B 1972 J. Math. Sociol. 2 113Google Scholar
[6] Kitsak M, Gallosl K, Havlin S, Liljeros F, Muchnik L, Stanley H, Makse H 2010 Nat. Phys. 6 888Google Scholar
[7] 胡钢, 徐翔, 张维明, 周鋆 2019 电子学报 47 104Google Scholar
Hu G, Xu X, Zhang W M, Zhou J 2019 Acta Electronica Sin. 47 104Google Scholar
[8] 于会, 刘尊, 李勇军 2013 62 54Google Scholar
Yu K, Liu Z, Li Y J 2013 Acta Phys. Sin. 62 54Google Scholar
[9] 胡钢, 徐翔, 过秀成 2018 浙江大学学报(工学版) 52 1989Google Scholar
Hu G, Xu X, Guo X C 2018 J. Zhejiang Univ.-(Eng. Sci.) 52 1989Google Scholar
[10] 王凯莉, 邬春学, 艾均, 苏湛 2019 68 196402Google Scholar
Wang K L, Wu C X, Ai J, Su Z 2019 Acta Phys. Sin. 68 196402Google Scholar
[11] Li C, Wang L, Sun S W, Xia C Y 2018 Appl. Math. Computation 320 512Google Scholar
[12] Ogura M, Preciado V M 2017 American Control Conference (ACC) Seattle, USA, May 24−26, 2017 p5001
[13] Tang J, Musolesi M, Mascolo C, Latora V 2009 Proceedings of the 2nd ACM Workshop on Online Social Networks Barcelona, Spain, August 17−17, 2009 p31
[14] Zhao G Y, Huang G Y, He H D, Wang Q 2019 IEEE Access 7 1Google Scholar
[15] Li H J, Bu Z, Wang Z, Cao J 2019 IEEE Trans. Ind. Inf. 16 5327Google Scholar
[16] 代萌, 黄生志, 黄强, 王璐, 郭怿 2019 水力发电学报 38 15Google Scholar
Dai M, Huang S Z, Huang Q, Wang L, Guo Y 2019 J. Hydroelectric Eng. 38 15Google Scholar
[17] Qu C Q, Zhan X X, Wang G H, Wu J L, Zhang Z K 2019 Chaos 29 033116Google Scholar
[18] Wang X, Gu H B, Wang Q Y, Lv J H 2019 Sci. Chin. 62 98
[19] Tang D S, Du W B, Shekhtman L, Wang Y J, Havlin S, Cao X B, Yan G 2020 Natl. Sci. Rev. 7 929Google Scholar
[20] Yang L M, Zhang W, Chen Y F 2015 Front. Inf. Technol. Electron. 16 805Google Scholar
[21] Schaub M T, Delvenne J C, Lambiotte R, Barahona M 2019 Phys. Rev. E 99 062308
[22] 李志宇, 梁循, 徐志明, 齐金山, 陈燕方 2017 计算机学报 40 805Google Scholar
Li Z Y, Liang X, Xu Z M, Qi J S, Chen Y F 2017 Chin. J. Comput. 40 805Google Scholar
[23] 郭强, 殷冉冉, 刘建国 2019 电子科技大学学报 48 296Google Scholar
Guo Q, Yin R R, Liu J G 2019 JEST 48 296Google Scholar
[24] 邱路, 黄国妍 2020 69 316138901Google Scholar
Qiu L, Huang G Y 2020 Acta Phys. Sin. 69 316138901Google Scholar
[25] Taylor D, Myers S A, Clauset A, Porter M A 2017 Multiscale Model. Simul. 15 537Google Scholar
[26] 杨剑楠, 刘建国, 郭强 2018 67 048901Google Scholar
Yang J N, Liu J G, Guo Q 2018 Acta Phys. Sin. 67 048901Google Scholar
[27] 朱义鑫, 张凤荔, 秦志光 2014 计算机应用 34 3184Google Scholar
Zhu Y X, Zhang F L, Qin Z G 2014 J. Comput. Appl. 34 3184Google Scholar
[28] Holme P, Saramäki J 2013 Temporal Networks (Heidel-berg: Springer) pp1−2
[29] Hamers L 1989 Inf. Process. Manage. 25 315Google Scholar
[30] Zhou T, Lü L, Zhang Y C 2009 Eur. Phys. J. B 71 623Google Scholar
[31] Van D, Sluis A 1979 LAA 26 265Google Scholar
[32] Latora V, Marchiori M 2007 New J. Phys. 9 188Google Scholar
[33] John T, Mirco M, Cecilia M, Vito L 2009 Proceedings of the 2 nd ACM Workshop on Online Social Networks Barcelona, Spain, August 17, 2009 p31
[34] Kendall M G 1945 Biometrika 33 239Google Scholar
[35] Génois M, Vestergaard C L, Fournet J, Panisson A 2015 Networks Sci. 3 326Google Scholar
[36] Ashwin P, Austin R B, Jure L 2017 In Proceedings of the Tenth ACM International Conference on Web Search and Data Mining Cambridge, United Kingdom, February 6−10, 2017 p601
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