Prevalence
For building and evaluating species distribution models, the porportion of presences of the species may be issues to take into account (e.g. Jimenez-Valverde & Lobo 2006, Barbosa et al. 2013). The prevalence
function calculates this measure.
prevalence(obs, event = 1, na.rm = TRUE)
obs |
a vector of binary observations (e.g. 1 vs. 0, male vs. female, disease vs. no disease, etc.). |
event |
the value whose prevalence we want to calculate (e.g. 1, "present", etc.). |
na.rm |
logical, whether NA values should be excluded. The default is TRUE. |
Numeric value of the prevalence of event
in the obs
vector.
A. Marcia Barbosa
Barbosa A.M., Real R., Munoz A.R. & Brown J.A. (2013) New measures for assessing model equilibrium and prediction mismatch in species distribution models. Diversity and Distributions, in press
Jimenez-Valverde A. & Lobo J.M. (2006) The ghost of unbalanced species distribution data in geographical model predictions. Diversity and Distributions, 12: 521-524.
(x <- rep(c(0, 1), each = 5)) (y <- c(rep(0, 3), rep(1, 7))) (z <- c(rep(0, 7), rep(1, 3))) prevalence(x) prevalence(y) prevalence(z)
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