convert_to_pa {itsdm}R Documentation

Convert predicted suitability to presence-absence map.

Description

Use threshold-based, logistic or linear conversion method to convert predicted suitability map to presence-absence map.

Usage

convert_to_pa(
  suitability,
  method = "logistic",
  beta = 0.5,
  alpha = -0.05,
  a = 1,
  b = 0,
  species_prevalence = NA,
  threshold = 0.5,
  seed = 10L,
  visualize = TRUE
)

Arguments

suitability

(stars or RasterLayer) The suitability raster.

method

(character) The conversion method, must be one of 'threshold', 'logistic', and 'linear'. The default is 'logistic'.

beta

(numeric) Works for 'threshold' or 'logistic' method. If method is threshold, then beta is the threshold value to cutoff. If method is logistic, it is the sigmoid midpoint. The default is 0.5.

alpha

(numeric) Works for logistic method. It is the logistic growth rate or steepness of the curve. The default is -.05.

a

(numeric) Works for linear method. It is the slope of the line. The default is 1.

b

(numeric) Works for linear method. It is the intercept of the line. The default is 0.

species_prevalence

(numeric or NA) Works for all three methods. It is the species prevalence to classify suitability map. It could be NA, when the will be calculated automatically based on other arguments. The default is NA.

threshold

(numeric) The threshold used to convert probability of occurrence to presence-absence map. It ranges in ⁠[0, 1]⁠. The default is 0.5.

seed

(integer) The seed for random progress. The default is 10L

visualize

(logical) If TRUE, plot map of suitability, probability of occurrence, and presence-absence together. The default is TRUE.

Details

Multiple methods and arguments could be used as a combination to do the conversion.

Value

(PAConversion) A list of

References

c onvertToPA in package virtualspecies

See Also

plot.PAConversion

Examples

# Using a pseudo presence-only occurrence dataset of
# virtual species provided in this package
library(dplyr)
library(sf)
library(stars)
library(itsdm)

# Prepare data
data("occ_virtual_species")
obs_df <- occ_virtual_species %>% filter(usage == "train")
eval_df <- occ_virtual_species %>% filter(usage == "eval")
x_col <- "x"
y_col <- "y"
obs_col <- "observation"

# Format the observations
obs_train_eval <- format_observation(
  obs_df = obs_df, eval_df = eval_df,
  x_col = x_col, y_col = y_col, obs_col = obs_col,
  obs_type = "presence_only")

env_vars <- system.file(
  'extdata/bioclim_tanzania_10min.tif',
  package = 'itsdm') %>% read_stars() %>%
  slice('band', c(1, 5, 12, 16))

# With imperfect_presence mode,
mod <- isotree_po(
  obs_mode = "imperfect_presence",
  obs = obs_train_eval$obs,
  obs_ind_eval = obs_train_eval$eval,
  variables = env_vars, ntrees = 5,
  sample_size = 0.8, ndim = 1L,
  nthreads = 1,
  seed = 123L, response = FALSE,
  spatial_response = FALSE,
  check_variable = FALSE)

# Threshold conversion
pa_thred <- convert_to_pa(mod$prediction,
                          method = 'threshold', beta = 0.5, visualize = FALSE)
pa_thred
plot(pa_thred)

## Not run: 
# Logistic conversion
pa_log <- convert_to_pa(mod$prediction, method = 'logistic',
                        beta = 0.5, alpha = -.05)

# Linear conversion
pa_lin <- convert_to_pa(mod$prediction, method = 'linear',
                        a = 1, b = 0)

## End(Not run)


[Package itsdm version 0.2.1 Index]