A Comparison of Novel Representations for Evolving Epidemic Networks

D. Ashlock, Michael Dubé
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引用次数: 5

Abstract

Recent work in representation has developed small, evolvable structures called a complex string generator that generate infinite, aperiodic strings of characters. Such a string can be sectioned to provide an arbitrary list of parameters of indefinite length. Other work in evolving networks to model disease transmission has an issue common in many high-dimensional problems, evolution is less efficient when it must get a large number of parameter values correct. Specifying many parameters with a small evolvable object is a potential solution to this problem. In this study we compare three different implementations of representations, two of which employ complex string generators, to specify social contact graphs that plausibly explain the pattern of infection in a small epidemic. Representations that edit a starting network are found to have results that clump in network space while evolving the adjacency matrix provides increased diversity: none of the representations overlap in their results. The adjacency matrix based representation also generated outliers that outperform a baseline representation, probably because of its enhance diversity of solutions.
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不断演变的流行病网络的新表征的比较
最近在表征方面的工作开发了一种小型的、可进化的结构,称为复杂字符串生成器,可以生成无限的、非周期性的字符串。这样的字符串可以分段,以提供任意长度的参数列表。在进化网络中对疾病传播建模的其他工作有一个在许多高维问题中常见的问题,即当进化必须获得大量正确的参数值时,它的效率较低。用一个小的可演化对象指定许多参数是解决这个问题的一个潜在方法。在本研究中,我们比较了三种不同的表示实现,其中两种采用复杂的字符串生成器,以指定社会联系图,合理地解释了小流行病的感染模式。编辑起始网络的表示被发现具有在网络空间中聚集的结果,而发展邻接矩阵提供了增加的多样性:没有任何表示在其结果中重叠。基于邻接矩阵的表示也产生了优于基线表示的离群值,可能是因为它增强了解决方案的多样性。
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