LP_CL_fit | R Documentation |
This will take a data frame of capture histories, frequencies, and a covariates and will do a non-parametric smoother for the detection probabilities as a function of the covariates and use this to estimate the population size.
LP_CL_fit(
data,
covariate,
centers = hist(data[, covariate, drop = TRUE], breaks = "Sturges", plot = FALSE)$mids,
h1 = (centers[2] - centers[1]) * 0.75,
h2 = (centers[2] - centers[1]) * 0.75,
conf_level = 0.95
)
data |
Data frame containing the variables:
plus any other covariates (e.g. discrete strata and/or continuous covariates) to be used in the model fitting. |
covariate |
Name of continuous covariate that influences capture probabilities at each event |
centers |
Centers of bins to group the covariates. We suggest no more than 30 bins in total with fewer bins with smaller sample sizes. Of course with smaller sample sizes, a simple stratified estimator may be easier to use. |
h1 , h2 |
Standard deviation of normal kernel for first sampling event. This should be between 1/2 and the 1.5x the bin width. Larger values imply more smoothing. Smaller values imply less smoothing. |
conf_level |
The expected coverage for confidence intervals on N. |
The frequency variable (freq
in the data
argument) is the number of animals with the corresponding capture history.
Capture histories (cap_hist
in the data
argument) are character values of length 2.
10 Animals tagged but never seen again.
11 Animals tagged and recaptured and tag present at event 2.
01 Animals captured at event 2 that appear to be untagged.
An list object of class LP_CL_fit with abundance estimates and other information with the following elements
summary A data frame with the estimates of abundance, SE, and CI
fit Details on the Chen and Lloyd fit including the smoothed estimates of catchability, estimates abundance by category classes, estimates of total abundance, plots of the estimated abundance curve and catchability curves, etc.
datetime Date and time the fit was done
SX Chen, CJ Lloyd (2000). A nonparametric approach to the analysis of two-stage mark-recapture experiments. Biometrika, 87, 633–649. \Sexpr[results=rd]{tools:::Rd_expr_doi("10.1093/biomet/87.3.633")}.
library(Petersen)
data(data_NorthernPike)
res <- LP_CL_fit(data_NorthernPike, "length")
res$summary
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