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A New Network Feature Affects the Intervention Performance on Public Opinion Dynamic Networks

机译:新的网络功能会影响公众舆论动态网络的干预性能

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The neighborhood network structure plays an important role in the collective opinion of an opinion dynamic system. Does it also affect the intervention performance? To answer this question, we apply three intervention methods on an opinion dynamic model, the weighted DeGroot model, to change the convergent opinion value (ar{x}). And we define a new network feature Ω, called ‘network differential degree’, to measure how node degrees couple with influential values in the network, i.e., large Ω indicates nodes with high degree is more likely to couple with large influential value. We investigate the relationship between the intervention performance and the network differential degree Ω in the following three intervention cases: (1) add one special agent (shill) to connect to one normal agent; (2) add one edge between two normal agents; (3) add a number of edges among agents. Through simulations we find significant correlation between the intervention performance, i.e., (|Delta {ar{x}}^{st }|) (the maximum value of the change of convergent opinion value (|Delta ar{x}|)) and Ω in all three cases: the intervention performance (|Delta {ar{x}}^{st }|) is higher when Ω is smaller. So Ω could be used to predict how difficult it is to intervene and change the convergent opinion value of the weighted DeGroot model. Meanwhile, a theorem of adding one edge and an algorithm for adding optimal edges are given.
机译:邻居网络结构在意见动态系统的集体意见中起着重要作用。它也会影响干预绩效吗?为了回答这个问题,我们在意见动态模型中应用三种干预方法,加权探测模型,改变收敛意见值( bar {x})。并且我们定义了一个名为“网络差分度”ω的新网络特征,以测量节点耦合网络中的有影响值的程度,即大Ω表示具有高度的节点更有可能与大的影响力耦合。我们调查以下三种干预案件中干预性能和网络差分度Ω之间的关系:(1)添加一个特殊代理(Shill)连接到一个普通代理; (2)在两个正常代理之间添加一个边缘; (3)在代理商之间添加许多边缘。通过仿真,我们在干预性能之间找到了显着的相关性,即(| delta { bar {x}} ^ { ast} | ^ { ast} | )(收敛意见值的变化的最大值(| delta 栏{x} | ))和ω在所有三个情况下:干预性能(| delta { {x}} ^ { ist} | ^ { ast} |ωω较小。所以ω可以用来预测干预和改变加权探测模型的收敛意见值的难度。同时,给出了添加一个边缘的定理和用于添加最佳边缘的算法。

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