Temporal changes in distributions and the species atlas: How can British and Irish plant data shoulder the inferential burden?

O. Pescott, T. A. Humphrey, P. Stroh, K. Walker
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引用次数: 15

Abstract

Species distribution atlases often rely on volunteer effort to achieve their desired coverage, an activity now typically discussed, at least in academia, under the general theme of “citizen science”. Such data, however, are rarely without complex biases, particularly with respect to the estimation of trends in species’ distributions over many decades. The data of the Botanical Society of Britain and Ireland (BSBI) are no exception to this, and both careful thought in data aggregation (spatial, temporal, and taxonomic) and appropriate modelling procedures are required to overcome these challenges. We discuss these issues, with a primary focus on the statistical models that have been put forward to adjust for such biases. Such models include the Telfer method, various “reporting rate” approaches based on generalised linear models, the frequency scaling using local occupancy (“Frescalo”) model, occupancy models, and spatial smoothing methods. In each case the strengths and limitations in relation to estimating trends from distribution data with important time-varying biases are assessed. Various properties of BSBI data, in particular the increasing numbers of records at fine spatial and temporal scales over the past century, coupled with a general lack of re-visits to sites at such finer scales and the time-varying biases previously mentioned, imply that methods that can be sensibly applied at coarser levels are likely to be most appropriate for estimating accurate long-term trends in distributions. We conclude that Frescalo, which can be seen as a type of occupancy model where an adjustment for overlooked species is made in relation to spatial rather than temporal replication, whilst simultaneously adjusting for variable regional effort, is currently the most sophisticated tool for achieving this. Although recording community-accepted adjustments to data collection practices may allow for a greater application of occupancy modelling or other approaches in the future, methods that seek accurate trends over the long-term are necessarily limited either to scales at which various properties of the data in hand are most likely to be unbiased, or at which the biases are well enough understood to be modelled accurately.
分布和物种图谱的时间变化:英国和爱尔兰植物数据如何承担推论负担?
物种分布地图集通常依靠志愿者的努力来实现其期望的覆盖范围,至少在学术界,这种活动现在通常以“公民科学”为主题进行讨论。然而,这些数据很少没有复杂的偏差,特别是在对几十年来物种分布趋势的估计方面。英国和爱尔兰植物学会(BSBI)的数据也不例外,在数据汇总(空间、时间和分类)和适当的建模程序中都需要仔细考虑,以克服这些挑战。我们讨论这些问题,主要集中在已经提出的统计模型,以调整这种偏见。这些模型包括Telfer方法、基于广义线性模型的各种“报告率”方法、使用本地占用率(Frescalo)模型的频率缩放、占用率模型和空间平滑方法。在每种情况下,评估了从具有重要时变偏差的分布数据估计趋势的优势和局限性。BSBI数据的各种特性,特别是在过去一个世纪中在精细时空尺度上的记录数量不断增加,加上在这种精细尺度上普遍缺乏对站点的重新访问,以及前面提到的时变偏差,意味着可以明智地应用于粗糙水平的方法可能是最适合准确估计分布的长期趋势的方法。我们得出的结论是,Frescalo可以被视为一种占用模型,其中对被忽视的物种进行了空间而不是时间复制的调整,同时调整了可变的区域努力,是目前实现这一目标的最复杂的工具。虽然记录社区接受的对数据收集实践的调整可能允许在未来更广泛地应用占用模型或其他方法,但寻求长期准确趋势的方法必然受到限制,要么是手头数据的各种属性最有可能是无偏的尺度,要么是对偏差有足够的了解以便准确建模的尺度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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