Department of Mathematical Science, City University London, Northampton Square, London EC1V 0HB, UK.
J Theor Biol. 2013 Sep 7;332:191-202. doi: 10.1016/j.jtbi.2013.04.023. Epub 2013 May 2.
Organisms often respond to environmental change phenotypically, through learning strategies that enhance fitness in variable and changing conditions. But which strategies should we expect in population exposed to those conditions? We address this question by developing a mathematical model that specifies the consequences of different mixtures of individual and social learning strategies on the frequencies of different cultural variants in temporally and spatially changing environments. Assuming that alternative cultural variants are differently well-adapted to diverse environmental conditions, we are able to evaluate which mixture of learning strategies maximises the mean fitness of the population. We find that, even in rapidly changing environments, a high proportion of the population will always engage in social learning. In those environments, the highest adaptation levels are achieved through relatively high fractions of individual learning and a strong conformist bias. We establish a negative relationship between the proportion of the population learning socially and the strength of conformity operating in a population: strong conformity requires fewer conformists (i.e. larger proportion of individual learning), while many conformists can only be found when conformist transmission is weak. Investigations of cultural diversity show that in frequently changing environments high levels of adaptation require high level of cultural diversity. Finally, we demonstrate how the developed mathematical framework can be applied to time series of usage or occurrence data of cultural traits. Using Approximate Bayesian Computation we are able to infer information about the underlying learning processes that could have produced observed patterns of variation in the dataset.
生物通常会通过表型适应环境变化,采用增强在多变和变化环境中适应性的学习策略。但是,在面临这些条件的种群中,我们应该期待哪种策略呢?我们通过开发一个数学模型来解决这个问题,该模型规定了个体和社会学习策略的不同组合对在时间和空间上变化的环境中不同文化变体频率的影响。假设替代的文化变体对不同的环境条件具有不同的适应性,我们就能够评估哪种学习策略组合可以使种群的平均适应性最大化。我们发现,即使在快速变化的环境中,也会有很大一部分种群始终参与社会学习。在这些环境中,通过相对较高的个体学习分数和强烈的从众偏差,可以实现最高的适应水平。我们建立了一个人口中参与社会学习的比例与在该人口中起作用的从众强度之间的负相关关系:强烈的从众要求的从众者较少(即个体学习的比例较大),而当从众传播较弱时,才能找到更多的从众者。对文化多样性的研究表明,在经常变化的环境中,高水平的适应性需要高水平的文化多样性。最后,我们展示了如何将开发的数学框架应用于文化特征的使用或出现数据的时间序列。我们使用近似贝叶斯计算,能够推断出可能导致数据集中观察到的变异模式的潜在学习过程的信息。