Dennis Emily B, Morgan Byron J T, Freeman Stephen N, Ridout Martin S, Brereton Tom M, Fox Richard, Powney Gary D, Roy David B
School of Mathematics, Statistics and Actuarial Science, University of Kent, Canterbury, United Kingdom.
Butterfly Conservation, Manor Yard, East Lulworth, Wareham, United Kingdom.
PLoS One. 2017 Mar 22;12(3):e0174433. doi: 10.1371/journal.pone.0174433. eCollection 2017.
Appropriate large-scale citizen-science data present important new opportunities for biodiversity modelling, due in part to the wide spatial coverage of information. Recently proposed occupancy modelling approaches naturally incorporate random effects in order to account for annual variation in the composition of sites surveyed. In turn this leads to Bayesian analysis and model fitting, which are typically extremely time consuming. Motivated by presence-only records of occurrence from the UK Butterflies for the New Millennium data base, we present an alternative approach, in which site variation is described in a standard way through logistic regression on relevant environmental covariates. This allows efficient occupancy model-fitting using classical inference, which is easily achieved using standard computers. This is especially important when models need to be fitted each year, typically for many different species, as with British butterflies for example. Using both real and simulated data we demonstrate that the two approaches, with and without random effects, can result in similar conclusions regarding trends. There are many advantages to classical model-fitting, including the ability to compare a range of alternative models, identify appropriate covariates and assess model fit, using standard tools of maximum likelihood. In addition, modelling in terms of covariates provides opportunities for understanding the ecological processes that are in operation. We show that there is even greater potential; the classical approach allows us to construct regional indices simply, which indicate how changes in occupancy typically vary over a species' range. In addition we are also able to construct dynamic occupancy maps, which provide a novel, modern tool for examining temporal changes in species distribution. These new developments may be applied to a wide range of taxa, and are valuable at a time of climate change. They also have the potential to motivate citizen scientists.
合适的大规模公民科学数据为生物多样性建模带来了重要的新机遇,部分原因在于信息的广泛空间覆盖。最近提出的占有率建模方法自然地纳入了随机效应,以考虑所调查地点组成的年度变化。这进而导致贝叶斯分析和模型拟合,而这通常极其耗时。受英国新千年蝴蝶数据库中仅存在记录的启发,我们提出了一种替代方法,其中通过对相关环境协变量进行逻辑回归,以标准方式描述地点变化。这允许使用经典推断进行有效的占有率模型拟合,使用标准计算机即可轻松实现。当每年需要为许多不同物种(例如英国蝴蝶)拟合模型时,这一点尤为重要。使用真实数据和模拟数据,我们证明了有无随机效应的两种方法在趋势方面可以得出相似的结论。经典模型拟合有许多优点,包括能够使用最大似然的标准工具比较一系列替代模型、识别合适的协变量并评估模型拟合。此外,根据协变量进行建模为理解正在运行的生态过程提供了机会。我们表明还有更大的潜力;经典方法使我们能够简单地构建区域指数,该指数表明占有率变化在物种分布范围内通常如何变化。此外,我们还能够构建动态占有率地图,这为检查物种分布的时间变化提供了一种新颖、现代的工具。这些新进展可能适用于广泛的分类群,在气候变化时期具有重要价值。它们还有可能激励公民科学家。