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首页> 外文期刊>The Journal of Applied Ecology >Decomposing trends in Swedish bird populations using generalized additive mixed models
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Decomposing trends in Swedish bird populations using generalized additive mixed models

机译:瑞典鸟类种群分解的趋势使用广义添加剂混合模型

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Estimating trends of populations distributed across wide areas is important for conservation and management of animals. Surveys in the form of annually repeated counts across a number of sites are used in many monitoring programmes, and from these, nonlinear trends may be estimated using generalized additive models (GAM). I use generalized additive mixed models (GAMM) to decompose population change into a long-term, smooth, trend component and a component for short-term fluctuations. The long-term population trend is modelled as a smooth function of time and short-term fluctuations as temporal random effects. The methods are applied to analyse trends in goldcrest and greenfinch populations in Sweden using data from the Swedish Breeding Bird Survey. I use simulations to investigate statistical properties of the model. The model separates short-term fluctuations from longer term population change. Depending on the amount of noise in the population fluctuations, estimated long-term trends can differ markedly from estimates based on standard GAMs. For the goldcrest with wide among-year fluctuations, trends estimated with GAMs suggest that the population has in recent years recovered from a decline. When filtering out, short-term fluctuations analyses suggest that the population has been in steady decline since the beginning of the survey. Simulations suggest that trend estimation using the GAMM model reduces spurious detection of long-term population change found with estimates from a GAM model, but gives similar mean square errors. The simulations therefore suggest that the GAMM model, which decomposes population change, estimates uncertainty of long-term trends more accurately at little cost in detecting them.Policy implications. Filtering out short-term fluctuations in the estimation of long-term smooth trends using temporal random effects in a generalized additive mixed model provides more robust inference about the long-term trends compared to when such random effects are not used. This can have profound effects on management decisions, as illustrated in an example for goldcrest in the Swedish breeding bird survey. In the example, if temporal random effects were not used, red listing would be highly influenced by the specific year in which it was done. When temporal random effects are used, red listing is stable over time. The methods are available in an R-package, poptrend.
机译:估计人口分布趋势在广泛领域保护是很重要的和管理的动物。每年重复计数的网站被用在许多监测项目,从这些非线性趋势可能估计使用广义可加模型(GAM)。广义添加剂混合模型(GAMM)人口变化分解为一个长期的,光滑、趋势组件和组件短期波动。趋势是描述为一个光滑的时间的函数和短期波动时间随机的效果。戴菊莺和小金翅人口的趋势瑞典使用数据从瑞典繁殖鸟调查。模型的统计特性。将短期波动了人口变化。噪音的人口波动,估计长期趋势明显不同从估计基于标准gam。与宽among-year戴菊莺波动,与gam表明趋势估计近年来人口从一个中恢复过来下降。波动分析表明,人口以来一直在稳步下降的开始吗这项调查。估计使用GAMM模型减少杂散检测发现的长期人口变化从GAM模型估计,但类似的均方误差。因此建议GAMM模型分解的人口变化,估计长期趋势的不确定性更准确在检测小成本。的影响。估计的长期波动的风险使用时间随机效应在一个平稳的趋势广义添加剂混合模型提供了更多健壮的推理的长期趋势而如果这些随机效应没有使用。管理决策,见一个例子在瑞典戴菊莺繁殖鸟类调查。影响是不习惯,红色清单高度的影响具体的年份这是完成了。使用红色清单随时间是稳定的。方法在一个R-package poptrend。

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