Suppr超能文献

网络上循环状态流行病模型的消息传递方法。

Message-passing approach for recurrent-state epidemic models on networks.

作者信息

Shrestha Munik, Scarpino Samuel V, Moore Cristopher

机构信息

Department of Physics and Astronomy, University of New Mexico, Albuquerque, New Mexico 87131, USA and Santa Fe Institute, 1399 Hyde Park Road, Santa Fe, New Mexico 87501, USA.

Santa Fe Institute, 1399 Hyde Park Road, Santa Fe, New Mexico 87501, USA.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2015 Aug;92(2):022821. doi: 10.1103/PhysRevE.92.022821. Epub 2015 Aug 27.

Abstract

Epidemic processes are common out-of-equilibrium phenomena of broad interdisciplinary interest. Recently, dynamic message-passing (DMP) has been proposed as an efficient algorithm for simulating epidemic models on networks, and in particular for estimating the probability that a given node will become infectious at a particular time. To date, DMP has been applied exclusively to models with one-way state changes, as opposed to models like SIS and SIRS where nodes can return to previously inhabited states. Because many real-world epidemics can exhibit such recurrent dynamics, we propose a DMP algorithm for complex, recurrent epidemic models on networks. Our approach takes correlations between neighboring nodes into account while preventing causal signals from backtracking to their immediate source, and thus avoids "echo chamber effects" where a pair of adjacent nodes each amplify the probability that the other is infectious. We demonstrate that this approach well approximates results obtained from Monte Carlo simulation and that its accuracy is often superior to the pair approximation (which also takes second-order correlations into account). Moreover, our approach is more computationally efficient than the pair approximation, especially for complex epidemic models: the number of variables in our DMP approach grows as 2mk where m is the number of edges and k is the number of states, as opposed to mk^{2} for the pair approximation. We suspect that the resulting reduction in computational effort, as well as the conceptual simplicity of DMP, will make it a useful tool in epidemic modeling, especially for high-dimensional inference tasks.

摘要

流行病传播过程是具有广泛跨学科研究价值的常见非平衡现象。最近,动态消息传递(DMP)被提出作为一种在网络上模拟流行病模型的高效算法,特别是用于估计给定节点在特定时间变得具有传染性的概率。迄今为止,DMP仅应用于具有单向状态变化的模型,而不像SIS和SIRS等模型,在这些模型中节点可以回到之前的状态。由于许多现实世界中的流行病可能表现出这种反复的动态变化,我们提出了一种用于网络上复杂反复流行病模型的DMP算法。我们的方法在考虑相邻节点之间相关性的同时,防止因果信号回溯到其直接来源,从而避免了“回音室效应”,即在一对相邻节点中,每个节点都会放大另一个节点具有传染性的概率。我们证明,这种方法能很好地逼近从蒙特卡罗模拟获得的结果,并且其准确性通常优于对近似法(该方法也考虑了二阶相关性)。此外,我们的方法在计算上比对比近似法更高效,特别是对于复杂的流行病模型:我们的DMP方法中变量的数量随着2mk增长,其中m是边的数量,k是状态的数量,而对比近似法中变量数量为mk²。我们推测,由此带来的计算量减少以及DMP概念上的简单性,将使其成为流行病建模中的一个有用工具,特别是对于高维推理任务。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验