期刊论文详细信息
PeerJ
Creating functional groups of marine fish from categorical traits
article
Monique A. Ladds1  Nokuthaba Sibanda1  Richard Arnold1  Matthew R. Dunn2 
[1] School of Mathematics and Statistics, Victoria University of Wellington;Population Modelling Group, National Institute of Water and Atmospheric Research
关键词: Clustering;    Traits;    Fish;    Missing data;    Stability;    Compactness;    Separation;    Connectedness;    Teleost;    Morphology;   
DOI  :  10.7717/peerj.5795
学科分类:社会科学、人文和艺术(综合)
来源: Inra
PDF
【 摘 要 】

BackgroundFunctional groups serve two important functions in ecology: they allow for simplification of ecosystem models and can aid in understanding diversity. Despite their important applications, there has not been a universally accepted method of how to define them. A common approach is to cluster species on a set of traits, validated through visual confirmation of resulting groups based primarily on expert opinion. The goal of this research is to determine a suitable procedure for creating and evaluating functional groups that arise from clustering nominal traits.MethodsTo do so, we produced a species by trait matrix of 22 traits from 116 fish species from Tasman Bay and Golden Bay, New Zealand. Data collected from photographs and published literature were predominantly nominal, and a small number of continuous traits were discretized. Some data were missing, so the benefit of imputing data was assessed using four approaches on data with known missing values. Hierarchical clustering is utilised to search for underlying data structure in the data that may represent functional groups. Within this clustering paradigm there are a number of distance matrices and linkage methods available, several combinations of which we test. The resulting clusters are evaluated using internal metrics developed specifically for nominal clustering. This revealed the choice of number of clusters, distance matrix and linkage method greatly affected the overall within- and between- cluster variability. We visualise the clustering in two dimensions and the stability of clusters is assessed through bootstrapping.ResultsMissing data imputation showed up to 90% accuracy using polytomous imputation, so was used to impute the real missing data. A division of the species information into three functional groups was the most separated, compact and stable result. Increasing the number of clusters increased the inconsistency of group membership, and selection of the appropriate distance matrix and linkage method improved the fit.DiscussionWe show that the commonly used methodologies used for the creation of functional groups are fraught with subjectivity, ultimately causing significant variation in the composition of resulting groups. Depending on the research goal dictates the appropriate strategy for selecting number of groups, distance matrix and clustering algorithm combination.

【 授权许可】

CC BY   

【 预 览 】
附件列表
Files Size Format View
RO202307100011562ZK.pdf 398KB PDF download
  文献评价指标  
  下载次数:10次 浏览次数:3次