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复杂网络上的意见动力学对谣言传播的影响

王祁月 刘润然 贾春晓

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复杂网络上的意见动力学对谣言传播的影响

王祁月, 刘润然, 贾春晓

Influence of opinion dynamics on rumor propagation in complex networks

Wang Qi-Yue, Liu Run-Ran, Jia Chun-Xiao
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  • 通过在SIR (susceptible-infected-recovered)模型中引入抑制者对谣言的辟谣机制研究了在线社交网络上的意见动力学对谣言传播的影响. 在这一模型中, 节点可以与自身的邻居组成1个群, 传播者可以通过该群传播信息, 抑制者也可以在此群中对信息发表意见进行辟谣. 辟谣机制在降低未知者对于谣言的接受概率的同时也可以促使传播者向抑制者转变. 本文采用ER (Erdös-Rényi) 随机网络、无标度网络以及真实的社交网络研究了抑制者的沉默概率对于谣言传播范围的影响. 首先发现, 谣言传播的过程以传播者的峰值为界可以分为两个阶段, 即谣言自由传播的前期以及抑制者和传播者互相制衡的后期; 其次, 谣言的传播会随着抑制者的沉默概率的增大而突然暴发. 在谣言暴发阈值之下, 沉默概率的增大不会导致谣言传播范围显著增大, 这是由于未知者在感知到谣言并转变为传播者后又迅速转变为抑制者; 而当沉默概率达到谣言暴发阈值时, 抑制者将不能控制传播者对谣言的传播从而导致抑制者的降低和谣言的暴发; 最后, 无标度上的谣言自由传播的前期阶段比随机网络持续的时间更短, 从而使无标度上的谣言更难以暴发. 本文的模型综合考虑了意见动力学和谣言传播的相互作用, 更加真实地模拟了真实世界社交网络中的谣言传播过程. 为谣言传播的控制和干预提供了一些有用的思路和见解.
    In this paper, the influence of opinion dynamics on rumor propagation is studied by introducing the mechanism of stifler’s comments on rumors into the susceptible-infected-recovered (SIR) model. In this model, individuals can form a group together with their direct neighbors, through which the spreader can spread rumors, and the stiflers can express opinions and refute the rumors. The mechanism of rumor refuting can not only reduce the acceptance rate of the ignorant to rumor, but also increase the transition probability of the spreader to be a stifler. In this paper, we use the Erdös-Rényi (ER) random network, scale-free network and real social network as the underlying interaction structure to study the influence of stifler’s silence probability on the rumor spreading dynamics. First of all, we find that the process of rumor propagation can be roughly divided into two stages, i.e., the early stage of free propagation of rumors and the later stage of checks and balances between the stiflers and the spreaders, respectively. Secondly, it is found that the rumor will break out with the increase of stifler’s silence probability. Under a threshold of rumor outbreak, the increase of silence probability will not lead the number of spreaders to significantly increase, but will cause more ignorance to perceive the rumor and quickly turn into spreaders, and then change into stiflers under the guidance of other stiflers. When the silence probability reaches a threshold, the stiflers will not be able to control the spread of rumors, which will lead the number of stiflers to decrease and the rumors to break out. Finally, the early stage of rumor propagation in scale-free networks is shorter than that of random network, which makes rumor more difficult to break out. Our model comprehensively considers the influence of opinion dynamics on the spreading of rumors and more realistically simulates the rumor diffusion process, which provides a useful insight for the rumor control in real-world social networks.
      通信作者: 贾春晓, chunxiaojia@163.com
    • 基金项目: 国家自然科学基金(批准号: 61773148)资助的课题
      Corresponding author: Jia Chun-Xiao, chunxiaojia@163.com
    • Funds: Project supported by the National Natural Science Foundation of China (Grant No. 61773148)
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    Shu P P, Gao L, Zhao P C, Wang W, Stanley H E 2017 Sci. Rep. 7 44669Google Scholar

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    Liu Z H, Lai Y C, Ye N 2003 Phys. Rev. E 67 031911Google Scholar

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    Moreno Y, Nekovee M, Vespignani A 2004 Phys. Rev. E 69 055101Google Scholar

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    Borge-Holthoefer J, Moreno Y 2012 Phys. Rev. E 85 026116Google Scholar

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    Wu D Y, Tang M, Liu Z H, Lai Y C 2020 Commun. Nonlinear Sci. Numer. Simul. 90 105403Google Scholar

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    Khanjanianpak M, Azimi-Tafreshi N, Castellano C 2020 Phys. Rev. E 101 062306Google Scholar

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    Granell C, Gómez S, Arenas A 2014 Phys. Rev. E 90 012808Google Scholar

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    Grassberger P, Chen L, Ghanbarnejad F, Cai W R 2016 Phys. Rev. E 93 042316Google Scholar

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    Xia L L, Jiang G P, Song B, Song Y R 2015 Physica A 437 295Google Scholar

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    Soriano-Paños D, Guo Q, Latora V, Gómez-Gardeñes J 2019 Phys. Rev. E 99 062311

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    Sznajd-Weron K, Sznajd J 2000 Int. J. Mod. Phys. C 11 1157Google Scholar

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    Holley R A, Liggett T M 1975 Ann. Prob. 3 643Google Scholar

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    Deffuant G, Neau D, Amblard F, Weisbuch G 2001 Adv. Complex Syst. 3 11

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    Hegselmann R, Krause U 2002 J. Arti. Soc. Social Simul. 5 3

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  • 图 1  谣言传播示意图 (a) 网络有三种状态节点, S状态、I状态和R状态, 图中蓝色圆圈表示其中1个传播者I与其邻居所构成的群; (b), (c)传播者向在以自己为中心的群中传播信息; 在受到抑制者的影响的情况下, S状态节点以一定概率转换成I状态节点, I状态节点以一定概率转换成R状态节点; (d) 系统到达稳态, 传播停止

    Fig. 1.  Schematic diagram of rumor propagation. (a) The network is composed of N nodes with three states S, I and R. The blue circle in the figure represents the group formed by one of the spreaders I and its neighbors. (b), (c) Spreaders spread the rumor to their self-centered groups. Influenced by the stiflers, S state node turns into I state node with a certain probability, and I state node turns into R state node with a certain probability. (d) The system reaches to a steady state and the spreading process ends.

    图 2  (a) ER网络上SIR三种状态的节点比例随时间的演化图, 沉默概率$\gamma = {{0}}{{.4}}$; (b) ER网络上稳态SIR节点比例随$\gamma $值的变化图, 图中曲线来自于网络规模为N = 1 × 106, 平均度为10 的ER随机网络, 初始传播者和抑制者的比例均设为0.1%. 图(b) 中的数据来自于演化时间t = 4 × 106时的结果

    Fig. 2.  (a) Time evolution of the fractions of nodes with different states on ER network, where the silence probability $\gamma $ is equal to 0.4; (b) the steady fractions of nodes with different states as a function of $\gamma $ on ER networks. The curves in the figure come from the ER random network with a size N = 1 × 106 and an average degree of 10. The fractions of both the initial spreaders and the stiflers are set as 0.1%. The data in panel (b) are from the simulation results for t = 4 × 106.

    图 3  ER网络上不同沉默概率$\gamma $ = 0.3, 0.6, 0.9下SIR三种不同状态节点的比例随时间演化图 (a) S态; (b) I态; (c) R态; 初始传播者和抑制者的比例均为0.1%, ER网络的平均度为10

    Fig. 3.  Time evolution of the fractions of nodes with different states on ER random networks with different silencing probability $\gamma $ = 0.3, 0.6 and 0.9: (a) State S; (b) state I; (c) state R. The initial fractions of spreaders and the stiflers are both 0.1%, and the average degree of the ER network is 10.

    图 4  (a)无标度网络上SIR三种状态的节点比例随时间的演化图, 沉默概率$\gamma = {{0}}{{.4}}$; (b)无标度网络上稳态SIR节点比例随$\gamma $值的变化图, 图中曲线来自于网络规模为N = 1 × 106, 平均度为10的无标度网络, 初始传播者和抑制者的比例均为0.1%, 图(b) 中的数据来自于演化时间t = 4 × 106时的结果

    Fig. 4.  (a) Time evolution of the fractions of nodes with different states on scale-free networks, where the silence probability $\gamma $ is equal to 0.4; (b) the steady fractions of nodes with different states as a function of $\gamma $ on scale-free network. The curves in the figure come from the scale-free network with a network size of N = 1 × 106 and an average degree of 10. The fractions of both the initial spreaders and the stiflers are set as 0.1%. The data in panel (b) are from the simulation results for t = 4 × 106.

    图 5  无标度网络上不同沉默概率$\gamma $ = 0.3, 0.6, 0.9下SIR三种状态节点的比例随时间演化图 (a) S态; (b) I态; (c) R态; 初始传播者和抑制者的比例均为0.1%, 网络平均度为10

    Fig. 5.  Time evolution of the fractions of nodes with different states on scale-free networks with different silencing probability $\gamma $ = 0.3, 0.6 and 0.9: (a) State S; (b) state I; (c) state R. The initial fractions of spreaders and the stiflers are both 0.1%, and the average degree of the scale-free network is 10.

    图 6  Facebook网络(a)和Gowalla网络(b)在双对数坐标下的累积度分布P(k)

    Fig. 6.  Cumulative degree distribution of Facebook network (a) and Gowalla network (b) in logarithmic coordinates.

    图 7  Facebook网络(a)和Gowalla网络(b)稳态SIR三种节点比例随不同$\gamma $值的变化; 在数值模拟中, 初始传播者和抑制者的比例均设为0.1%; 图(b) 中的数据来自于演化时间t = 4 × 106时的结果

    Fig. 7.  Steady fraction of nodes with different states as functions of $\gamma $ on Facebook network (a) and Gowalla network (b). In the numerical simulations, the initial fractions of spreaders and the stiflers are both 0.1%. The data in panel (b) are from the simulation results for t = 4 × 106.

    Baidu
  • [1]

    Skvoretz J, Faust K, Fararo T J 1996 J. Math. Sociol. 21 57Google Scholar

    [2]

    Weng L L, Menczer F, Ahn Y Y 2013 Sci. Rep. 3 2522Google Scholar

    [3]

    Lazer D M J, Baum M A, Benkler Y, et al. 2018 Science 359 6380Google Scholar

    [4]

    Castellano C, Fortunato S, Loreto V 2009 Rev. Mod. Phys. 81 591Google Scholar

    [5]

    Moreno Y, Nekovee M, Pachec A F 2004 Phys. Rev. E 69 066130Google Scholar

    [6]

    Zanette D H 2002 Phys. Rev. E 65 041908Google Scholar

    [7]

    Yang J, McAuley J, Leskovec J 2013 IEEE 13th International Conference on Data Mining Texas, USA, December 7–10, 2013 p1151

    [8]

    Moreno Y, Gómez J B, Pacheco A F 2003 Phys. Rev. E 68 035103Google Scholar

    [9]

    Shu P P, Gao L, Zhao P C, Wang W, Stanley H E 2017 Sci. Rep. 7 44669Google Scholar

    [10]

    Guilbeault D, Becker J, Centola D 2018 Complex Spreading Phenomena in Social Systems (Berlin: Springer) pp3−25

    [11]

    Daley D J, Kendall D J 1964 Nature 204 1118Google Scholar

    [12]

    Maki D P, Thompson M 1973 Mathematical Models and Applications: With Emphasis on the Social, Life, and Management Sciences (New Jersey: Prentice-Hall) p492

    [13]

    Kermack W O, Mckendrick A G 1991 Bull. Mathemat. Biol. 53 5787

    [14]

    Liu Z H, Lai Y C, Ye N 2003 Phys. Rev. E 67 031911Google Scholar

    [15]

    Moreno Y, Nekovee M, Vespignani A 2004 Phys. Rev. E 69 055101Google Scholar

    [16]

    Borge-Holthoefer J, Moreno Y 2012 Phys. Rev. E 85 026116Google Scholar

    [17]

    Chen Y, Wang W, Feng J P, Lu Y, Gong X Q 2020 PLoS One 15 e0229201Google Scholar

    [18]

    Shah D, Zaman T 2011 IEEE Trans. Inf. Theory 57 8Google Scholar

    [19]

    Sun Y, Ma L, Zeng A, Wang W X 2016 Sci. Rep. 6 38865Google Scholar

    [20]

    Wu D Y, Tang M, Liu Z H, Lai Y C 2020 Commun. Nonlinear Sci. Numer. Simul. 90 105403Google Scholar

    [21]

    Khanjanianpak M, Azimi-Tafreshi N, Castellano C 2020 Phys. Rev. E 101 062306Google Scholar

    [22]

    Granell C, Gómez S, Arenas A 2014 Phys. Rev. E 90 012808Google Scholar

    [23]

    Grassberger P, Chen L, Ghanbarnejad F, Cai W R 2016 Phys. Rev. E 93 042316Google Scholar

    [24]

    Sahneh F D, Scoglio C M 2012 IEEE 51st IEEE Conference on Decision and Control Maui, USA, December 10–13, 2012 p1657

    [25]

    Pan Y H, Yan Z J 2018 Chaos 28 063123Google Scholar

    [26]

    Zhao L J, Wang J J, Chen Y C, Wang Q, Cheng J J, Cui H X 2012 Physica A 391 2444Google Scholar

    [27]

    Xia L L, Jiang G P, Song B, Song Y R 2015 Physica A 437 295Google Scholar

    [28]

    Soriano-Paños D, Guo Q, Latora V, Gómez-Gardeñes J 2019 Phys. Rev. E 99 062311

    [29]

    Sznajd-Weron K, Sznajd J 2000 Int. J. Mod. Phys. C 11 1157Google Scholar

    [30]

    Holley R A, Liggett T M 1975 Ann. Prob. 3 643Google Scholar

    [31]

    Deffuant G, Neau D, Amblard F, Weisbuch G 2001 Adv. Complex Syst. 3 11

    [32]

    Hegselmann R, Krause U 2002 J. Arti. Soc. Social Simul. 5 3

    [33]

    Meng X F, Van Gorder R A, Porter M A 2018 Phys. Rev. E 97 022312

    [34]

    Ghose A, Ipeirotis P G 2010 IEEE Trans. Know. Data Eng. 23 1498Google Scholar

    [35]

    张亮, 杨闪, 李霞 2017 系统工程 35 82Google Scholar

    Zhang L, Yang S, Li X 2017 Systems Engineering 35 82Google Scholar

    [36]

    Petra P, Ewa D S 2019 J. Soc. Political Psy. 7 2Google Scholar

    [37]

    Li R Q, Li Y W, Meng Z Y, Song Y R, Jiang G P 2020 IEEE Access 8 63065Google Scholar

    [38]

    单学刚, 朱燕, 孙敏 2015 中国媒体发展研究报告 2015 168

    Shan X G, Zhu Y, Sun M 2015 Rep. on Stud. China Med. Devel. 2015 168

    [39]

    Sudbury A 1985 J. Appl. Prob. 22 443Google Scholar

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出版历程
  • 收稿日期:  2020-09-06
  • 修回日期:  2020-10-31
  • 上网日期:  2021-03-03
  • 刊出日期:  2021-03-20

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