What You Believe Travels Differently: Information and Infection Dynamics across Sub-networks.

Connections (Toronto, Ont.) Pub Date : 2010-12-01
Patrick Grim, Christopher Reade, Daniel J Singer, Steven Fisher, Stephen Majewicz
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Abstract

In order to understand the transmission of a disease across a population we will have to understand not only the dynamics of contact infection but the transfer of health-care beliefs and resulting health-care behaviors across that population. This paper is a first step in that direction, focusing on the contrasting role of linkage or isolation between sub-networks in (a) contact infection and (b) belief transfer. Using both analytical tools and agent-based simulations we show that it is the structure of a network that is primary for predicting contact infection-whether the networks or sub-networks at issue are distributed ring networks or total networks (hubs, wheels, small world, random, or scale-free for example). Measured in terms of time to total infection, degree of linkage between sub-networks plays a minor role. The case of belief is importantly different. Using a simplified model of belief reinforcement, and measuring belief transfer in terms of time to community consensus, we show that degree of linkage between sub-networks plays a major role in social communication of beliefs. Here, in contrast to the case of contract infection, network type turns out to be of relatively minor importance. What you believe travels differently. In a final section we show that the pattern of belief transfer exhibits a classic power law regardless of the type of network involved.

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你所相信的以不同的方式传播:跨子网络的信息和感染动态。
为了了解疾病在人群中的传播我们不仅要了解接触感染的动态,还要了解卫生保健观念的转移以及由此产生的卫生保健行为在人群中的传播。本文是朝这个方向迈出的第一步,重点关注(a)接触感染和(b)信念转移中子网络之间的链接或隔离的对比作用。使用分析工具和基于代理的模拟,我们表明,网络的结构是预测接触感染的主要因素——无论问题中的网络或子网络是分布式环形网络还是总网络(例如集线器、车轮、小世界、随机或无标度)。从时间到总感染的角度来衡量,子网络之间的联系程度起着次要作用。信仰的情况是重要的不同。我们使用一个简化的信念强化模型,并测量了从时间到社区共识的信念转移,结果表明子网络之间的联系程度在信念的社会传播中起着重要作用。在这里,与合同感染的情况相比,网络类型的重要性相对较小。你所相信的会以不同的方式传播。在最后一节中,我们展示了无论涉及哪种类型的网络,信念转移的模式都表现出经典的幂律。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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