Suppr超能文献

论环境噪声的设定与种群动力模型的性能。

On the setting of environmental noise and the performance of population dynamical models.

机构信息

Department of Mathematics and Statistics, FIN-00014 University of Helsinki, Finland.

出版信息

BMC Ecol. 2010 Mar 12;10:7. doi: 10.1186/1472-6785-10-7.

Abstract

BACKGROUND

Environmental noise is ubiquitous in population growth processes, with a well acknowledged potential to affect populations regardless of their sizes. It therefore deserves consideration in population dynamics modelling. The usual approach to incorporating noise into population dynamical models is to make some model parameter(s) (typically the growth rate, the carrying capacity, or both) stochastic and responsive to environment fluctuations. It is however still unclear whether including noise in one or/and another parameter makes a difference to the model performance. Here we investigated this issue with a focus on model fit and predictive accuracy. To do this, we developed three population dynamical models of the Ricker type with the noise included in the growth rate (Model 1), in the carrying capacity (Model 2), and in both (Model 3). We generated several population time series under each model, and used a Bayesian approach to fit the three models to the simulated data. We then compared the model performances in fitting to the data and in forecasting future observations.

RESULTS

When the mean intrinsic growth rate, r, in the data was low, the three models had roughly comparable performances, irrespective of the true model and the level of noise. As r increased, Models 1 performed best on data generated from it, and Model 3 tended to perform best on data generated from either Models 2 or Model 3. Model 2 was uniformly outcompeted by the other two models, regardless of the true model and the level of noise. The correlation between the deviance information criterion (DIC) and the mean square error (MSE) used respectively as measure of fit and predictive accuracy was broadly positive.

CONCLUSION

Our results suggested that the way environmental noise is incorporated into a population dynamical model may profoundly affect its performance. Overall, we found that including noise in one or/and another parameter does not matter as long as the mean intrinsic growth rate, r, is low. As r increased, however, the three models performed differently. Models 1 and 3 broadly outperformed Model 2, the first having the advantage of being simple and more computationally tractable. A comforting result emerging from our analysis is the broad positive correlation between MSEs and DICs, suggesting that the latter may also be informative about the predictive performance of a model.

摘要

背景

环境噪声在人口增长过程中无处不在,它显然有潜力影响任何规模的种群。因此,它应该在种群动态模型中得到考虑。将噪声纳入种群动态模型的常用方法是使某些模型参数(通常是增长率、承载能力或两者)随机化并对环境波动做出响应。然而,目前尚不清楚在一个或/和另一个参数中包含噪声是否会对模型性能产生影响。在这里,我们关注模型拟合和预测精度来研究这个问题。为此,我们开发了三种具有增长率(模型 1)、承载能力(模型 2)和两者(模型 3)中包含噪声的里克特(Ricker)型种群动态模型。我们在每个模型下生成了多个种群时间序列,并使用贝叶斯方法将这三个模型拟合到模拟数据中。然后,我们比较了模型在数据拟合和未来观测预测方面的性能。

结果

当数据中的平均内在增长率 r 较低时,三个模型的表现大致相当,而不论真实模型和噪声水平如何。随着 r 的增加,模型 1 在由其生成的数据上表现最佳,而模型 3 在由模型 2 或模型 3 生成的数据上表现最佳。模型 2 无论真实模型和噪声水平如何,都始终被其他两个模型所竞争。偏差信息准则(DIC)和均方误差(MSE)之间的相关性分别作为拟合度和预测精度的度量,具有广泛的正相关性。

结论

我们的结果表明,将环境噪声纳入种群动态模型的方式可能会深刻影响其性能。总体而言,我们发现只要平均内在增长率 r 较低,在一个或/和另一个参数中包含噪声并不重要。然而,随着 r 的增加,三个模型的表现不同。模型 1 和 3 大致优于模型 2,模型 1 的优势在于简单且更易于计算。我们分析中出现的一个令人欣慰的结果是 MSE 和 DIC 之间的广泛正相关性,这表明后者也可以提供有关模型预测性能的信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1b99/2842232/34d96e65be60/1472-6785-10-7-1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验