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The Latent Dirichlet Allocation model with covariates (LDAcov): A case study on the effect of fire on species composition in Amazonian forests

机译:具有协变者(LDACOV)的潜在Dirichlet分配模型:对亚马逊森林中物种组成的影响案例研究

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摘要

Understanding and predicting the effect of global change phenomena on biodiversity is challenging given that biodiversity data are highly multivariate, containing information from tens to hundreds of species in any given location and time. The Latent Dirichlet Allocation (LDA) model has been recently proposed to decompose biodiversity data into latent communities. While LDA is a very useful exploratory tool and overcomes several limitations of earlier methods, it has limited inferential and predictive skill given that covariates cannot be included in the model. We introduce a modified LDA model (called LDAcov) which allows the incorporation of covariates, enabling inference on the drivers of change of latent communities, spatial interpolation of results, and prediction based on future environmental change scenarios. We show with simulated data that our approach to fitting LDAcov is able to estimate well the number of groups and all model parameters. We illustrate LDAcov using data from two experimental studies on the long‐term effects of fire on southeastern Amazonian forests in Brazil. Our results reveal that repeated fires can have a strong impact on plant assemblages, particularly if fuel is allowed to build up between consecutive fires. The effect of fire is exacerbated as distance to the edge of the forest decreases, with small‐sized species and species with thin bark being impacted the most. These results highlight the compounding impacts of multiple fire events and fragmentation, a scenario commonly found across the southern edge of Amazon. We believe that LDAcov will be of wide interest to scientists studying the effect of global change phenomena on biodiversity using high‐dimensional datasets. Thus, we developed the R package LDAcov to enable the straightforward use of this model.
机译:了解和预测的全球变化现象对生物多样性的影响是具有挑战性鉴于生物多样性数据是非常多元,包含从几十信息上百种,在任何给定的位置和时间。该隐含狄利克雷分布(LDA)模型,最近已提出分解生物多样性数据到潜在社区。虽然LDA是一个非常有用的工具,探索,克服了早期方法的若干局限性,它已给予该协不能被包括在模型中的限制推理和预测能力。我们引入一个修正LDA模型(称为LDAcov),它允许协变量的引入,使得对潜在的社区,结果的空间插值变化的驱动因素推断和预测基于未来环境变化的情景。我们用模拟的数据显示,我们的装修LDAcov方法能够推断井群的数量和所有模型参数。我们说明了使用LDAcov数据来自两个实验研究火对巴西东南部亚马孙森林的长期影响。我们的研究结果表明,反复火灾可能对植物组合有很大的影响,尤其是如果允许燃料连续火灾之间建立。火的效果恶化为距离的森林的边缘减小,具有小尺寸的种类和与薄树皮物种受到影响最大。这些结果突出显示多个火事件和分裂,跨亚马逊的南部边缘常见的一个场景的复合影响。我们相信,LDAcov将是广泛的兴趣科学家研究全球变化现象对生物多样性利用高维数据集的作用。因此,我们开发了将R包LDAcov,使简单的使用这种模式。

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