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Mathematical equivalence of geometric mean fitness with probabilistic optimization under environmental uncertainty

机译:环境不确定性下概率优化与几何平均适应度的数学等价

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摘要

Natural selection can be considered as optimising fitness. Because 'mean' fitness is maximized with respect to the genotypes of carriers, traditional theory can be viewed as a statistical theory of natural selection. Probabilistic optimisation is a way to incorporate such uncertainty into optimality analyses of natural selection, where environmental uncertainty is expressed as a probability distribution. Its canonical form is a weighted average of fitness with respect to a given probabilistic distribution. This concept should be applicable to three different levels of uncertainty: (1) behavioural variations of an individual, (2) individual variations within a generation, and (3) temporal change over generations (geometric mean fitness). The former two levels are straightforward with many empirical evidences, but the last category, the geometric mean fitness, has not well understood. Here we studied the geometric mean fitness by taking its logarithm, where the log growth rates become the fitness value. By further transforming the log growth rates, the fitness of log growth rates becomes its linear function. Therefore, a simple average of these distributions becomes the fitness measure across generations and consideration of variance discount or the entire probability distributions becomes unnecessary. We discuss some characteristic features of probabilistic optimization in general. Our view is considered a probabilistic view of natural selection, in contrast with the traditional statistical view of natural selection.
机译:自然选择可以被认为是优化适应性。由于相对于携带者的基因型,“均值”适用性已最大化,因此传统理论可以被视为自然选择的统计理论。概率优化是一种将这种不确定性纳入自然选择的最优性分析的方法,其中环境不确定性表示为概率分布。其规范形式是相对于给定概率分布的适应度的加权平均值。此概念应适用于三个不同级别的不确定性:(1)个人的行为变化,(2)一代内的个体变化,以及(3)几代人之间的时间变化(几何平均适应度)。前两个级别很简单,有许多经验证据,但最后一个级别(几何均值适应性)尚未得到很好的理解。在这里,我们通过取对数来研究几何平均适应度,对数增长率成为适应度值。通过进一步转换对数增长率,对数增长率的适应度成为其线性函数。因此,这些分布的简单平均值成为各代之间的适应性度量,而不必考虑方差折扣或整个概率分布。我们通常讨论概率优化的一些特征。与传统的自然选择统计视图相比,我们的视图被认为是自然选择的概率视图。

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