Information dissemination evolution under group feedback

Y. Yang, F. Nian, J. S. Liu
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Abstract

In this paper, based on the feedback mechanism from the perspective of network groups, the evolutionary characteristics and laws of group networks under information dissemination are studied. First, the network is divided into groups of different sizes, and each group is given a dynamically changing group activity and a positive degree of response to different categories of information. Second, a feedback-based model of information dissemination in group networks is developed, which takes into account the differences between same-group and cross-group dissemination of information. Next, the model is applied to a scale-free network and a small-world network for simulation experiments. The experimental results show that, under the feedback mechanism, the main factor affecting the final evolutionary results of each group size in the small-world network is group positivity, which has little relationship with the initial size; similarly, the main factor affecting the average degree of each group in the scale-free network is also group positivity, which has nothing to do with the initial average degree. Finally, the method is applied to a real network to verify the rationality and effectiveness of the proposed model.
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群体反馈下的信息传播演化
本文从网络群体的角度出发,基于反馈机制,研究了信息传播下群体网络的演化特征和规律。首先,将网络划分为不同规模的群体,并赋予每个群体动态变化的群体活动和对不同类别信息的积极响应程度。其次,建立了基于反馈的群体网络信息传播模型,该模型考虑了信息在同一群体和跨群体传播中的差异。然后,将该模型应用于无标度网络和小世界网络进行仿真实验。实验结果表明,在反馈机制下,影响小世界网络中各群体规模最终演化结果的主要因素是群体积极性,而群体积极性与初始规模关系不大;同样,影响无标度网络中各群体平均度的主要因素也是群体积极性,而群体积极性与初始平均度无关。最后,将该方法应用于实际网络,验证了所提模型的合理性和有效性。
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