Drury Kevin L S, Dwyer Greg
Department of Ecology and Evolution, University of Chicago, Chicago, Illinois 60637, USA.
Am Nat. 2005 Dec;166(6):731-50. doi: 10.1086/497542. Epub 2005 Oct 4.
Stochastic models are of increasing importance in ecology but are usually only applied to observational data. Here we use a stochastic population model to combine experimental and observational data to understand the colonization of old fields by monarch butterflies Danaus plexippus. We experimentally tested for density dependence in oviposition rates when predators were excluded, and we measured predation rates under natural conditions. Significance tests on the resulting data showed that both oviposition and predation were density dependent but could not show how oviposition and mortality combine to determine egg densities in nature. We therefore used our data to calculate the Akaike Information Criterion to choose between a nested suite of stochastic models that differed in their oviposition and mortality terms. When we simply fit the models to the observational data, the best model assumed density independence in both oviposition and predation. When we instead first estimated the oviposition rate at low density from experimental data, however, the best model included density dependence in oviposition, and a model that included density dependence in both oviposition and predation performed nearly as well. This result is consistent with our experiments and suggests that experiments can enhance the usefulness of stochastic models in ecology.
随机模型在生态学中的重要性日益增加,但通常仅应用于观测数据。在此,我们使用一个随机种群模型来整合实验数据和观测数据,以了解黑脉金斑蝶对弃耕地的定殖情况。我们通过实验测试了在排除捕食者的情况下产卵率的密度依赖性,并测量了自然条件下的捕食率。对所得数据进行的显著性检验表明,产卵和捕食均具有密度依赖性,但无法显示产卵和死亡率如何共同决定自然界中的卵密度。因此,我们利用数据计算赤池信息准则,以便在一组嵌套的随机模型中进行选择,这些模型在产卵和死亡率方面有所不同。当我们简单地将模型拟合到观测数据时,最佳模型假定产卵和捕食均与密度无关。然而,当我们首先根据实验数据估计低密度下的产卵率时,最佳模型包含产卵的密度依赖性,并且一个同时包含产卵和捕食密度依赖性的模型表现也几乎同样出色。这一结果与我们的实验一致,表明实验可以提高随机模型在生态学中的实用性。