The CV is dead, long live the CV
Biology has an increasing need to reconsider the tools used to assess the variability of measurements, in addition to their central tendency. More than 100 years after Pearson's publication, most biologists still use the “good old” Pearson's coefficient of variation, P CV, despite its docu...
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Veröffentlicht in: | Methods in ecology and evolution 2023-11, Vol.14 (11), p.2780-2786 |
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Zusammenfassung: | Biology has an increasing need to reconsider the tools used to assess the variability of measurements, in addition to their central tendency. More than 100 years after Pearson's publication, most biologists still use the “good old” Pearson's coefficient of variation,
P
CV, despite its documented flaws such as sensitivity to excess zero values and/or irrelevant low mean values, which may compromise its use in some biological applications.
A new statistic was developed in 2017 by Kvålseth,
K
CV, which is easy to implement. Unlike
P
CV,
K
CV is bounded (between 0 and 1), and it can be computed from
P
CV, ensuring backward compatibility with past studies. In addition to simulated data, we used the recent MASTREE+ database comprising the time series of the fruiting dynamics of perennial plants worldwide to compare the properties of
P
CV and
K
CV.
Using as a benchmark the loose hump‐shaped relationship between the interannual variability of fruiting and latitude,
K
CV led to significant increase in statistical power as it required almost half as many time series as
P
CV to detect the relationship. Perhaps most importantly, simulated data showed that
K
CV allows huge reductions in the length of time series required to estimate the population true variability, saving more than half the duration of long‐term monitoring if fruiting fluctuations are very large, which is common in perennial plant species. Compared to the widely used
P
CV,
K
CV has great accuracy for estimating and analysing variability in biology, while strongly increasing statistical power.
Selecting appropriate tools to assess the variability of measurements is crucial, particularly where the variability is of primary biological interest. Using Kvålseth's
K
CV is a promising avenue to circumvent the well‐known issues of the former Pearson’
P
CV, its properties remain to be explored in other fields of biology, for purposes other than purely statistical ones (e.g. estimating heritability or evolvability of traits). |
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ISSN: | 2041-210X 2041-210X |
DOI: | 10.1111/2041-210X.14197 |