梅人杰:Modeling for heterogeneous multi-stage information propagation networks and maximizing information论文

梅人杰:Modeling for heterogeneous multi-stage information propagation networks and maximizing information论文

本文主要研究内容

作者梅人杰,丁李,安栩明,胡萍(2019)在《Modeling for heterogeneous multi-stage information propagation networks and maximizing information》一文中研究指出:In this paper, we propose a heterogeneous multi-stage model to study the effect of social reinforcement on information propagation. Both heterogeneity of network components and the heterogeneity of individual reinforcement thresholds are considered. An information outbreak condition is derived, according to which the outbreak scale and individual density of each state under specific propagation parameters can be deduced. Monte Carlo experiments are conducted in Facebook networks to demonstrate the outbreak condition, and we find that social reinforcement effects generally inhibit the propagation of information though it contributes to the emergence of certain hot spots simultaneously. Additionally, by applying Pontryagin’s Maximum Principle, we derive the optimal control strategy in the case of limited control resources to maximize the information propagation. Then the forward–backward sweep method is utilized to verify its performance with numerical simulation.

Abstract

In this paper, we propose a heterogeneous multi-stage model to study the effect of social reinforcement on information propagation. Both heterogeneity of network components and the heterogeneity of individual reinforcement thresholds are considered. An information outbreak condition is derived, according to which the outbreak scale and individual density of each state under specific propagation parameters can be deduced. Monte Carlo experiments are conducted in Facebook networks to demonstrate the outbreak condition, and we find that social reinforcement effects generally inhibit the propagation of information though it contributes to the emergence of certain hot spots simultaneously. Additionally, by applying Pontryagin’s Maximum Principle, we derive the optimal control strategy in the case of limited control resources to maximize the information propagation. Then the forward–backward sweep method is utilized to verify its performance with numerical simulation.

论文参考文献

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  • 论文详细介绍

    论文作者分别是来自Chinese Physics B的梅人杰,丁李,安栩明,胡萍,发表于刊物Chinese Physics B2019年02期论文,是一篇关于,Chinese Physics B2019年02期论文的文章。本文可供学术参考使用,各位学者可以免费参考阅读下载,文章观点不代表本站观点,资料来自Chinese Physics B2019年02期论文网站,若本站收录的文献无意侵犯了您的著作版权,请联系我们删除。

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    梅人杰:Modeling for heterogeneous multi-stage information propagation networks and maximizing information论文
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