特质
生态学
选择(遗传算法)
非生物成分
生态选择
生物多样性
社区
生物成分
生态系统
生物
环境资源管理
环境科学
计算机科学
机器学习
程序设计语言
作者
Elina Kaarlejärvi,Malcolm S. Itter,Tiina Tonteri,Leena Hamberg,Maija Salemaa,Päivi Merilä,Jarno Vanhatalo,Anna‐Liisa Laine
出处
期刊:Ecology
[Wiley]
日期:2024-07-26
卷期号:105 (9)
被引量:3
摘要
Understanding the drivers of community assembly is critical for predicting the future of biodiversity and ecosystem services. Ecological selection ubiquitously shapes communities by selecting for individuals with the most suitable trait combinations. Detecting selection types on key traits across environmental gradients and over time has the potential to reveal the underlying abiotic and biotic drivers of community dynamics. Here, we present a model-based predictive framework to quantify the multidimensional trait distributions of communities (community trait spaces), which we use to identify ecological selection types shaping communities along environmental gradients. We apply the framework to over 3600 boreal forest understory plant communities with results indicating that directional, stabilizing, and divergent selection all modify community trait distributions and that the selection type acting on individual traits may change over time. Our results provide novel and rare empirical evidence for divergent selection within a natural system. Our approach provides a framework for identifying key traits under selection and facilitates the detection of processes underlying community dynamics.
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