Missing data in craniometrics: a simulation study

被引:0
|
作者
Olivier Gauthier
Pierre-Alexandre Landry
François-Joseph Lapointe
机构
[1] Université de Montréal C. P. 6128,Département de sciences biologiques
[2] Department of Ecology and Systematics,Metapopulation Research Group, Division of Population Biology
来源
Acta Theriologica | 2003年 / 48卷
关键词
craniometry; morphometry; missing data; estimation methods; distance; coefficients;
D O I
暂无
中图分类号
学科分类号
摘要
Craniometric measurements represent a useful tool for studying the differentiation of mammal populations. However, the fragility of skulls often leads to incomplete data matrices. Damaged specimens or incomplete sets of measurements are usually discarded prior to statistical analysis. We assessed the performance of two strategies that avoid elimination of observations: (1) pairwise deletion of missing cells, and (2) estimation of missing data using available measurements. The effect of these distinct approaches on the computation of inter-individual distances and population differentiation analyses were evaluated using craniometric measurements obtained from insular populations of deer micePeromyscus maniculatus (Wagner, 1845). In our simulations, Euclidean distances were greatly altered by pairwise deletion, whereas Gower’s distance coefficient corrected for missing data provided accurate results. Among the different estimation methods compared in this paper, the regression-based approximations weighted by coefficients of determination (r2) outperformed the competing approaches. We further show that incomplete sets of craniometric measurements can be used to compute distance matrices, provided that an appropriate coefficient is selected. However, the application of estimation procedures provides a flexible approach that allows researchers to analyse incomplete data sets.
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页码:25 / 34
页数:9
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