论文标题
测量嵌套:对不同指标性能的比较研究
Measuring Nestedness: A comparative study of the performance of different metrics
论文作者
论文摘要
嵌套是在自然共同社区中广泛观察到的相互作用网络的属性。尽管对这种模式产生了普遍的兴趣,但如何对其进行衡量尚无一般共识。取而代之的是,基于网络的不同但不一定是独立的属性,旨在量化嵌套的几个指标,在文献中共存,使生态系统之间的比较模糊了。在这项工作中,我们详细介绍了六个流行嵌套指标的行为及其两个变体的行为。为了评估其性能,我们比较了它们中大量实际网络的嵌套值,以及最大熵和最大似然零模型的嵌套值。我们的结果首先指出,指标并未对网络的嵌套程度进行普遍排名。此外,几个指标对所考虑的网络属性显示出明显的不希望的依赖性。对这些依赖性的研究使我们能够了解嵌套的真实值与无效模型的平均值之间的某些系统变化。本文打算通过解释六个标准指标及其两个变体的功能,然后披露其质量和缺陷,从而为读者提供有关如何测量嵌套模式的关键指南。通过这样做,我们还旨在扩展基于最大熵的最近提出的无效模型的应用,直到仍然在很大程度上未开发的生态网络领域。最后,为了补充指南,我们提供了一个名为nullnest的完整记录的存储库,该存储库使用研究的指标收集代码以产生无效模型并计算嵌套索引 - 实际值和无效的指标。此外,存储库包含了无效模型的主要结果,该结果应用于200多个两部分网络的大数据集。
Nestedness is a property of interaction networks widely observed in natural mutualistic communities. Despite a widespread interest on this pattern, no general consensus exists on how to measure it. Instead, several metrics aiming at quantifying nestedness, based on different but not necessarily independent properties of the networks, coexist in the literature blurring the comparison between ecosystems. In this work, we present a detailed critical study of the behavior of six popular nestedness metrics and the variants of two of them. In order to evaluate their performance, we compare the obtained values of the nestedness of a large set of real networks among them and against a maximum entropy and maximum likelihood null model. Our results point out, first, that the metrics do not rank the degree of nestedness of networks universally. Furthermore, several metrics show significant undesired dependencies on the network properties considered. The study of these dependencies allows us to understand some of the systematic shifts between the real values of nestedness and the average over the null model. This paper intends to provide readers with a critical guide on how to measure nestedness patterns, by explaining the functioning of six standard metrics and two of its variants, and then disclosing its qualities and flaws. By doing so, we also aim to extend the application of the recently proposed null models based on maximum entropy to the still largely unexplored area of ecological networks. Finally, to complement the guide, we provide a fully-documented repository named nullnest which gathers the codes to produce the null model and calculate the nestedness index -- both the real value and the null expectation -- using the studied metrics. The repository contains, moreover, the main results of the null model applied to a large dataset of more than 200 bipartite networks.