与物种为伴,方知物种真伪:利用共现数据改进生态预测

IF 2.2 3区 环境科学与生态学 Q2 ECOLOGY Journal of Vegetation Science Pub Date : 2024-11-07 DOI:10.1111/jvs.13314
Andrew Siefert, Daniel C. Laughlin, Francesco Maria Sabatini
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引用次数: 0

摘要

目的 对物种进行预测,包括预测它们如何应对环境变化,是生态学家面临的一项核心挑战。由于物种数量庞大,生态学家寻求基于物种性状和系统发育关系的概括,但基于性状和系统发育模型的预测能力往往很低。物种共现模式可能包含性状或系统发育关系无法捕捉到的有关物种生态属性的额外信息。我们建议使用一种新颖的排序技术,将物种共现数据中包含的信息编码成低维向量,用于代表生态预测中的物种。 方法 我们提出了一种从共生数据中推导物种向量的有效方法,该方法使用的是词表示全局向量(GloVe),这是一种最初设计用于语言建模的无监督学习算法。为了演示这种方法,我们使用 GloVe,利用从全球开放植被地块数据库 sPlotOpen 中提取的共生统计信息,为近 40,000 种植物生成了物种向量,并测试了这些向量预测欧洲山地植物物种海拔范围变化的能力。 结果 基于共生的物种矢量与性状或系统发育的相关性很弱,表明它们编码了物种的独特信息。与仅包含性状或系统发育信息的模型相比,包含基于共生率的物种向量的模型对物种分布范围变化的解释能力是后者的两倍。 结论 鉴于物种出现数据的广泛可用性,从共生模式中学习到的物种矢量是一种广泛适用的强大工具,可用于编码物种的生态信息,在描述和预测物种、群落和生态系统的生态方面有许多潜在应用。
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You shall know a species by the company it keeps: Leveraging co-occurrence data to improve ecological prediction

Aim

Making predictions about species, including how they respond to environmental change, is a central challenge for ecologists. Because of the huge number of species, ecologists seek generalizations based on species’ traits and phylogenetic relationships, but the predictive power of trait-based and phylogenetic models is often low. Species co-occurrence patterns may contain additional information about species’ ecological attributes not captured by traits or phylogenies. We propose using a novel ordination technique to encode the information contained in species co-occurrence data in low-dimensional vectors that can be used to represent species in ecological prediction.

Method

We present an efficient method to derive species vectors from co-occurrence data using Global Vectors for Word Representation (GloVe), an unsupervised learning algorithm originally designed for language modelling. To demonstrate the method, we used GloVe to generate vectors for nearly 40,000 plant species using co-occurrence statistics derived from sPlotOpen, an open-access global vegetation plot database, and tested their ability to predict elevational range shifts in European montane plant species.

Results

Co-occurrence-based species vectors were weakly correlated with traits or phylogeny, indicating that they encode unique information about species. Models including co-occurrence-based vectors explained twice as much variation in species range shifts as models including only traits or phylogenetic information.

Conclusions

Given the widespread availability of species occurrence data, species vectors learned from co-occurrence patterns are a widely applicable and powerful tool for encoding ecological information about species, with many potential applications for describing and predicting the ecology of species, communities and ecosystems.

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来源期刊
Journal of Vegetation Science
Journal of Vegetation Science 环境科学-林学
CiteScore
6.00
自引率
3.60%
发文量
60
审稿时长
2 months
期刊介绍: The Journal of Vegetation Science publishes papers on all aspects of plant community ecology, with particular emphasis on papers that develop new concepts or methods, test theory, identify general patterns, or that are otherwise likely to interest a broad international readership. Papers may focus on any aspect of vegetation science, e.g. community structure (including community assembly and plant functional types), biodiversity (including species richness and composition), spatial patterns (including plant geography and landscape ecology), temporal changes (including demography, community dynamics and palaeoecology) and processes (including ecophysiology), provided the focus is on increasing our understanding of plant communities. The Journal publishes papers on the ecology of a single species only if it plays a key role in structuring plant communities. Papers that apply ecological concepts, theories and methods to the vegetation management, conservation and restoration, and papers on vegetation survey should be directed to our associate journal, Applied Vegetation Science journal.
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