Introducing多因素分析(MFA)作为诊断分类工具补充主成分分析(PCA)。

IF 1.3 3区 生物学 Q2 ZOOLOGY
ZooKeys Pub Date : 2025-08-04 eCollection Date: 2025-01-01 DOI:10.3897/zookeys.1248.159516
L Lee Grismer
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引用次数: 0

摘要

介绍了多因素分析(MFA)作为一种分类诊断工具,并从爬行动物文献中举例进行了讨论。它的方法和输出比较和对比更常用的主成分分析(PCA)。MFA与PCA之间最显著的区别在于,前者可以在分析中更恰当地整合数字特征(分生和/或形态特征)和分类特征(例如,大-小、蓝-红、条纹-带状、龙骨-光滑等),从而产生几乎全证据的形态学输出。MFA强调在统计上可防御的景观中分类特征的诊断效用,而不是通常由于其可变性而在物种诊断中经常进行轶事治疗或完全遗漏。当只分析单一数字数据类型(例如,形态计量学或分生统计学)时,PCA的信息量最大。利用PCA分别分析不同的数据类型并比较结果,可以确定哪种数据类型及其变量(性状/性状)对操作分类单位(OTUs[即种群或物种])之间的差异影响最大,在某些情况下,还可以确定其生物学意义。如果在PCA中使用了多种数据类型,那么输出可能会受到变异量或统计方差最大的数据类型的影响。还讨论了使用非参数排列方差分析(PERMANOVA)或类似分析的必要性,作为评估OTU图位置的重要性而不是主观视觉解释的稳健,统计上站得住的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing multiple factor analysis (MFA) as a diagnostic taxonomic tool complementing principal component analysis (PCA).

Multiple factor analysis (MFA) is introduced as a diagnostic tool for taxonomy and discussed using examples from the herpetological literature. Its methodology and output are compared and contrasted to the more often used principal component analysis (PCA). The most significant difference between MFA and PCA is that the former can more appropriately integrate numeric (meristic and/or morphometric) and categorical characters (e.g., big-small, blue-red, striped-banded, keeled-smooth, etc.) in the analysis, thus creating a nearly total-evidence morphological output. MFA emphasizes the diagnostic utility of categorical characters in a statistically defensible landscape as opposed to their often-anecdotal treatment or complete omission in species diagnoses, usually owing to their variability. PCA is most informative when only a single numeric data type (e.g., morphometric or meristic) is analyzed. Using PCA to analyze different data types separately and comparing the results, one can determine which data type and which of their variables (traits/characters) bear most heavily on the differentiation among the operational taxonomic units (OTUs [i.e., populations or species]) and, in some cases, their biological significance. If more than one data type is used in a PCA, the output may be biased by the data type with the largest amount of variation or statistical variance. Also discussed is the necessity of using a non-parametric permutation of analysis of variance (PERMANOVA)-or a similar analysis-as a robust, statistically defensible method for assessing the significance of OTU plot positions as opposed to subjective visual interpretations.

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来源期刊
ZooKeys
ZooKeys 生物-动物学
CiteScore
2.70
自引率
15.40%
发文量
400
审稿时长
3 months
期刊介绍: ZooKeys is a peer-reviewed, open-access, online and print, rapidly produced journal launched to support free exchange of ideas and information in systematic zoology, phylogeny and biogeography. All papers can be freely copied, downloaded, printed and distributed at no charge. Authors and readers are thus encouraged to post the pdf files of published papers on homepages or elsewhere to expedite distribution. There is no charge for color.
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