Abstract

Biodiversity can be represented by different dimensions. While many diversity metrics try to capture the variation of these dimensions they also lead to a ‘fragmentation’ of the concept of biodiversity itself. Developing a unified measure that integrates all the dimensions of biodiversity is a theoretical solution for this problem, however, it remains operationally impossible. Alternatively, understanding which dimensions better represent the biodiversity of a set of communities can be a reliable way to integrate the different diversity metrics. Therefore, to achieve a holistic understand of biological diversity, we explore the concept of dimensionality. We define dimensionality of diversity as the number of complementary components of biodiversity, represented by diversity metrics, needed to describe biodiversity in an unambiguously and effective way. We provide a solution that joins two components of dimensionality – correlation and the variation – operationalized through two metrics, respectively: evenness of eigenvalues (EE) and importance values (IV). Through simulation we show that considering EE and IV together can provide information that is neglected when only EE is considered. We demonstrate how to apply this framework by investigating the dimensionality of South American small mammal communities. Our example evidenced that, for some representations of biological diversity, more attention is needed in the choice of diversity metrics necessary to effectively characterize biodiversity. We conclude by highlighting that this integrated framework provides a better understanding of dimensionality than considering only the correlation component.

Highlights

  • Biodiversity encompasses all variation present in life, from genetic material to populations, communities and higher levels of biological organization like entire ecosystems (Wilson 1997)

  • We evaluate whether EE and Importance Values (IV) can recover these patterns by simulating communities with varying degrees of correlation and variation for each metric in biodiversity space obtained from matrix M

  • The ability of IV to capture the degree of redundancy in biodiversity information of the metrics was clear mainly for the HiC/DifV scenario, in which the attribute used to generate communities exhibited low variation (OU model) and, aCC-BY-NC-ND 4.0 International license

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Summary

Introduction

Biodiversity encompasses all variation present in life, from genetic material to populations, communities and higher levels of biological organization like entire ecosystems (Wilson 1997). In addition to its broadness in scale and complexity, the central position of the concept of biodiversity in ecological studies justifies efforts to develop measures that properly operationalize the concept These efforts are reflected in the immensurable number of diversity metrics that have appeared as attempts to encompass all the variation in biodiversity. These diversity metrics allow the description of different dimensions, as the number of them increases the concept of biodiversity becomes operationalized in disparate ways that convey no precise information. A theoretical approach to searching for fundamental variation in biodiversity is to integrate the many sources of information in a unique framework

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