用于群落级预测的贝叶斯联合物种分布模型选择

IF 6.3 1区 环境科学与生态学 Q1 ECOLOGY Global Ecology and Biogeography Pub Date : 2024-03-21 DOI:10.1111/geb.13827
Malcolm S. Itter, Elina Kaarlejärvi, Anna-Liisa Laine, Leena Hamberg, Tiina Tonteri, Jarno Vanhatalo
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引用次数: 0

摘要

物种联合分布模型(JSDM)是预测全球变化下生态系统多样性和功能的重要工具。现代物种联合分布模型的复杂性日益增加,因此有必要针对新条件下群落预测的挑战(即可转移模型)仔细选择模型。评估 JSDM 在群落水平预测方面的性能的常见方法是基于单个物种预测,这种方法没有考虑到 JSDM 固有的物种相关结构。在这里,我们正式提出了一种考虑物种相关性结构的贝叶斯模型选择方法,并将其应用于在广泛的环境梯度中比较替代 JSDM 的群落级预测性能,以模拟可转移应用。我们定义了社区级预测的联合对数分数,并将其与更常用的 JSDM 评估指标区分开来。然后,我们将群落联合对数分数应用于评估 1918 个样本外北方森林林下群落的预测结果,这些群落包括 39 个物种,这些群落是利用新型多叉 JSDM 框架生成的,该框架支持其他物种相关性结构:独立相关性、组成依赖性和残余相关性。增加灵活的残余物种相关性仅在应用了较少环境变量集的 JSDM 中改善了模型预测,突出了未观察到的环境条件与残余物种依赖性之间的潜在混杂。在不同的演替和生物气候梯度中,无论对物种还是群落水平的预测感兴趣,表现最好的 JSDM 都是一致的。我们的研究证明了联合群落对数评分在比较联合群落模式预测性能方面的实用性,并强调了在新条件下关注群落组成时考虑物种依赖性的重要性。
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Bayesian joint species distribution model selection for community-level prediction

Aim

Joint species distribution models (JSDMs) are an important tool for predicting ecosystem diversity and function under global change. The growing complexity of modern JSDMs necessitates careful model selection tailored to the challenges of community prediction under novel conditions (i.e., transferable models). Common approaches to evaluate the performance of JSDMs for community-level prediction are based on individual species predictions that do not account for the species correlation structures inherent in JSDMs. Here, we formalize a Bayesian model selection approach that accounts for species correlation structures and apply it to compare the community-level predictive performance of alternative JSDMs across broad environmental gradients emulating transferable applications.

Innovation

We connect the evaluation of JSDM predictions to Bayesian model selection theory under which the log score is the preferred performance measure for probabilistic prediction. We define the joint log score for community-level prediction and distinguish it from more commonly applied JSDM evaluation metrics. We then apply the joint community log score to evaluate predictions of 1918 out-of-sample boreal forest understory communities spanning 39 species generated using a novel multinomial JSDM framework that supports alternative species correlation structures: independent, compositional dependence and residual dependence.

Main conclusions

The best performing JSDM included all observed environmental variables and compositional dependence modelled using a multinomial likelihood. The addition of flexible residual species correlations improved model predictions only within JSDMs applying a reduced set of environmental variables highlighting potential confounding between unobserved environmental conditions and residual species dependence. The best performing JSDM was consistent across successional and bioclimatic gradients regardless of whether interest was in species- or community-level prediction. Our study demonstrates the utility of the joint community log score to compare the predictive performance of JSDMs and highlights the importance of accounting for species dependence when interest is in community composition under novel conditions.

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来源期刊
Global Ecology and Biogeography
Global Ecology and Biogeography 环境科学-生态学
CiteScore
12.10
自引率
3.10%
发文量
170
审稿时长
3 months
期刊介绍: Global Ecology and Biogeography (GEB) welcomes papers that investigate broad-scale (in space, time and/or taxonomy), general patterns in the organization of ecological systems and assemblages, and the processes that underlie them. In particular, GEB welcomes studies that use macroecological methods, comparative analyses, meta-analyses, reviews, spatial analyses and modelling to arrive at general, conceptual conclusions. Studies in GEB need not be global in spatial extent, but the conclusions and implications of the study must be relevant to ecologists and biogeographers globally, rather than being limited to local areas, or specific taxa. Similarly, GEB is not limited to spatial studies; we are equally interested in the general patterns of nature through time, among taxa (e.g., body sizes, dispersal abilities), through the course of evolution, etc. Further, GEB welcomes papers that investigate general impacts of human activities on ecological systems in accordance with the above criteria.
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