Department of Mathematics, The University of Queensland, QLD 4072, Australia.
Math Biosci. 2010 Feb;223(2):142-50. doi: 10.1016/j.mbs.2009.11.008. Epub 2009 Nov 20.
Population dynamics are almost inevitably associated with two predominant sources of variation: the first, demographic variability, a consequence of chance in progenitive and deleterious events; the second, initial state uncertainty, a consequence of partial observability and reporting delays and errors. Here we outline a general method for incorporating random initial conditions in population models where a deterministic model is sufficient to describe the dynamics of the population. Additionally, we show that for a large class of stochastic models the overall variation is the sum of variation due to random initial conditions and variation due to random dynamics, and thus we are able to quantify the variation not accounted for when random dynamics are ignored. Our results are illustrated with reference to both simulated and real data.
第一个是生殖和有害事件中的偶然产生的人口统计学可变性;第二个是初始状态不确定性,这是部分可观察性以及报告延迟和错误的结果。在这里,我们概述了一种将随机初始条件纳入种群模型的通用方法,其中确定性模型足以描述种群的动态。此外,我们表明,对于一大类随机模型,总体变化是由随机初始条件引起的变化和由随机动态引起的变化之和,因此,我们能够量化忽略随机动态时未考虑的变化。我们的结果参考了模拟和真实数据进行了说明。