School of Mathematics and Statistics, University College Dublin, Dublin, Ireland.
Insight Centre for Data Analytics, Ireland, Dublin.
Sci Rep. 2024 Sep 27;14(1):22123. doi: 10.1038/s41598-024-72006-w.
The relative abundance of groups of species is often used in ecological surveys to estimate community composition, a metric that reflects patterns of commonness and rarity of biological assemblages. The focus of this paper is measurements of the abundances of four benthic groups (that live on the seafloor) at several reefs on Australia's Great Barrier Reef (GBR) gathered between 2012 and 2017. In this paper we develop a statistical model to find clusters of locations with similar composition. We examine the changes in clusters during a period impacted by an unprecedented sequence of extreme environmental disturbances. To achieve this, we propose a model that incorporates the geographical location of the data, accounting for the possibility that nearby reefs are similar in composition. This is accomplished with a Dirichlet mixture model and a Potts distribution on the cluster assignments. Non-availability of the normalised Potts distribution makes Bayesian inference a doubly-intractable task. To circumvent this additional inferential challenge, an approximate exchange algorithm is specified. The analysis of the 2012 data, collected before the weather disturbances, reveals four clusters. The four groups highlight the primary habitat patterns in the 2012 GBR, each with distinct ecological characteristics: (1) areas with above-average soft coral abundance, (2) sand-dominated regions commonly found in the central part, (3) southern reefs with a more balanced distribution of species, and (4) habitats dominated by algae and hard corals. Compared to subsequent surveys conducted after disturbances, there is evidence of a decline in the number of clusters and a simplification of reef composition at the regional scale.
生物群落的相对丰度通常用于生态调查,以估计群落组成,这一指标反映了生物组合的常见程度和稀有程度的模式。本文的重点是在 2012 年至 2017 年间,对澳大利亚大堡礁(GBR)几个珊瑚礁的四个底栖生物组(生活在海底的生物)的丰度进行测量。在本文中,我们开发了一种统计模型来寻找具有相似组成的位置聚类。我们研究了在一段受到前所未有的一系列极端环境干扰影响的时期内,聚类的变化情况。为此,我们提出了一种模型,该模型纳入了数据的地理位置,考虑了附近珊瑚礁在组成上可能相似的可能性。这是通过狄利克雷混合模型和聚类分配上的泊松分布来实现的。由于无法获得归一化的泊松分布,使得贝叶斯推断成为一项双重棘手的任务。为了规避这一额外的推断挑战,指定了一个近似交换算法。对 2012 年数据的分析是在天气干扰之前收集的,揭示了四个聚类。这四个组突出了 2012 年大堡礁的主要栖息地模式,每个组都具有独特的生态特征:(1)软珊瑚丰度高于平均水平的区域,(2)中部常见的以沙为主的区域,(3)南部珊瑚礁物种分布更平衡,以及(4)以藻类和硬珊瑚为主的栖息地。与干扰后进行的后续调查相比,有证据表明聚类的数量减少,以及区域尺度上的珊瑚礁组成简化。