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首页> 外文期刊>Scientiae mathematicae Japonicae >POWER-LAW DISTRIBUTIONS FROM EXPONENTIAL PROCESSES: AN EXPLANATION FOR THE OCCURRENCE OF LONG-TAILED DISTRIBUTIONS IN BIOLOGY AND ELSEWHERE
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POWER-LAW DISTRIBUTIONS FROM EXPONENTIAL PROCESSES: AN EXPLANATION FOR THE OCCURRENCE OF LONG-TAILED DISTRIBUTIONS IN BIOLOGY AND ELSEWHERE

机译:指数过程中的幂律分布:生物学和其他领域中长尾分布的发生的解释

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A possible explanation for the frequent occurrence of power-law distributions in biology and elsewhere comes from an analysis of the interplay between random time evolution and random observation or killing time. If the system population or its topological parameters grow exponentially with time, and observations on the system correspond to stopping the evolution at an exponentially distributed random time, power-law behaviour in one or both tails of the distribution of observed quantities may result. We pursue this theme for two specific models. The first model is a randomly killed birth-and-death process, with applications to the numbers of genes per gene family and proteins per protein family, the distribution of taxonomic elements in live taxa, and other areas. The second model is a randomly growing network, with the state of a random node (which thus has a random age) observed. For the growing network, we consider both tree-like networks, appropriate in biological applications, and networks in which closed loops can appear, which model communication networks and networks of human sexual interactions.
机译:生物学和其他领域经常发生幂律分布的一种可能解释是对随机时间演化与随机观察或杀死时间之间相互作用的分析。如果系统总体或其拓扑参数随时间呈指数增长,并且对系统的观察相当于在指数分布的随机时间停止演化,则可能会在观察到的数量分布的一条或两条尾部产生幂律行为。我们针对两个特定模型追求此主题。第一个模型是一个随机杀死的生与死过程,适用于每个基因家族的基因数量和每个蛋白质家族的蛋白质数量,活生物群中生物分类元素的分布以及其他领域。第二个模型是一个随机增长的网络,其中观察到一个随机节点(因此具有随机年龄)的状态。对于不断发展的网络,我们既考虑适用于生物学应用的树状网络,也考虑可能出现闭环的网络,该网络对通信网络和人类性互动网络进行建模。

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