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首页> 外文期刊>The international arab journal of information technology >Effects of Network Structures and Fermi Function's ammeter beta in Promoting Information Spreading on Dynamic Social Networks
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Effects of Network Structures and Fermi Function's ammeter beta in Promoting Information Spreading on Dynamic Social Networks

机译:网络结构和费米函数的电流表beta对促进动态社交网络上信息传播的影响

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摘要

Network represents a multitude of interactions through which information spreads within a society. Indeed, people are connected according to the way they interact with one another and the resulting network significantly determines the efficiency and speed of information spreading. This paper aimed at examining how topological structures of dynamic social network ks and Fermi function's parameter 13 influence information spreading. In order to carry out this study preciously, two models were proposed to generate a variety of network structures. To study the spreading process, the models were integrated with an epidemic Susceptible-Infected-Recovered (SIR) model and designed in such a way that nodes rewire network edges according to Fermi function which depends on a parameter beta. By studying the number of recovered nodes generated in the spreading process and the number of acquainted nodes that are receiving information in each time step, the results suggested that network structure and both positive and negative beta play an important role in promoting information spreading. These results give a good indication that the structure of a society influences the spreading process. More specifically, the structure of dynamic interactions is a good promoter of information spreading. Moreover, it is proposed that rewiring more than three edges of random network could yield no significant advantages in promoting information spreading. The present study likely enriches our knowledge and provides more insight on information spreading.
机译:网络代表着各种相互作用,信息通过这些相互作用在社会中传播。确实,人们是根据彼此交互的方式连接在一起的,由此产生的网络极大地决定了信息传播的效率和速度。本文旨在研究动态社交网络ks的拓扑结构和Fermi函数的参数13如何影响信息传播。为了珍贵地进行这项研究,提出了两种模型来生成各种网络结构。为了研究传播过程,将模型与流行病易感感染恢复模型(SIR)集成在一起,并进行设计,使节点根据费米函数重新布线网络边缘,费米函数取决于参数beta。通过研究在传播过程中生成的恢复节点的数量以及在每个时间步长中接收信息的熟悉节点的数量,结果表明网络结构以及正和负β均在促进信息传播中起着重要作用。这些结果很好地表明了社会结构会影响传播过程。更具体地说,动态交互的结构是信息传播的良好促进者。此外,建议重新布线随机网络的三个以上边缘在促进信息传播方面不会产生明显优势。本研究可能会丰富我们的知识,并提供有关信息传播的更多见解。

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