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Data integration for inference about spatial processes: A model-based approach to test and account for data inconsistency

机译:数据集成以推断空间过程:一种基于模型的方法来测试和解决数据不一致问题

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摘要

Recently-developed methods that integrate multiple data sources arising from the same ecological processes have typically utilized structured data from well-defined sampling protocols (e.g., capture-recapture and telemetry). Despite this new methodological focus, the value of opportunistic data for improving inference about spatial ecological processes is unclear and, perhaps more importantly, no procedures are available to formally test whether parameter estimates are consistent across data sources and whether they are suitable for integration. Using data collected on the reintroduced brown bear population in the Italian Alps, a population of conservation importance, we combined data from three sources: traditional spatial capture-recapture data, telemetry data, and opportunistic data. We developed a fully integrated spatial capture-recapture (SCR) model that included a model-based test for data consistency to first compare model estimates using different combinations of data, and then, by acknowledging data-type differences, evaluate parameter consistency. We demonstrate that opportunistic data lend itself naturally to integration within the SCR framework and highlight the value of opportunistic data for improving inference about space use and population size. This is particularly relevant in studies of rare or elusive species, where the number of spatial encounters is usually small and where additional observations are of high value. In addition, our results highlight the importance of testing and accounting for inconsistencies in spatial information from structured and unstructured data so as to avoid the risk of spurious or averaged estimates of space use and consequently, of population size. Our work supports the use of a single modeling framework to combine spatially-referenced data while also accounting for parameter consistency.
机译:整合来自相同生态过程的多个数据源的最近开发的方法通常利用了来自定义明确的采样协议(例如,捕获-重新捕获和遥测)的结构化数据。尽管有这种新的方法论重点,但机会主义数据对于改善对空间生态过程的推断的价值尚不清楚,也许更重要的是,尚无可用于正式测试参数估计值在数据源之间是否一致以及是否适合集成的程序。利用在意大利阿尔卑斯山重新引入的棕熊种群(具有重要保护意义的种群)收集的数据,我们结合了三个来源的数据:传统的空间捕获-捕获数据,遥测数据和机会主义数据。我们开发了一个完全集成的空间捕获-捕获(SCR)模型,该模型包括基于模型的数据一致性测试,首先使用不同的数据组合比较模型估计值,然后通过确认数据类型差异来评估参数一致性。我们证明了机会主义数据自然而然地适合于SCR框架内的集成,并强调了机会主义数据对于改善对空间利用和人口规模的推断的价值。这在稀有或难以捉摸的物种的研究中尤为重要,在这些物种中,空间相遇的次数通常很少,而且附加观测值具有很高的价值。此外,我们的结果强调了测试和解决结构化和非结构化数据中空间信息不一致问题的重要性,从而避免了对空间使用以及人口规模的虚假估计或平均估计的风险。我们的工作支持使用单个建模框架来组合空间参考数据,同时还要考虑参数的一致性。

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