plot_response_surface {spatialRF} | R Documentation |
Plots the response surfaces of a random forest model
Description
Plots response surfaces for any given pair of predictors in a rf()
, rf_repeat()
, or rf_spatial()
model.
Usage
plot_response_surface(
model = NULL,
a = NULL,
b = NULL,
quantiles = 0.5,
grid.resolution = 100,
point.size.range = c(0.5, 2.5),
point.alpha = 1,
fill.color = viridis::viridis(100, option = "F", direction = -1, alpha = 0.9),
point.color = "gray30",
verbose = TRUE
)
Arguments
model |
A model fitted with |
a |
Character string, name of a model predictor. If |
b |
Character string, name of a model predictor. If |
quantiles |
Numeric vector between 0 and 1. Argument |
grid.resolution |
Integer between 20 and 500. Resolution of the plotted surface Default: |
point.size.range |
Numeric vector of length 2 with the range of point sizes used by geom_point. Using |
point.alpha |
Numeric between 0 and 1, transparency of the points. Setting it to |
fill.color |
Character vector with hexadecimal codes (e.g. "#440154FF" "#21908CFF" "#FDE725FF"), or function generating a palette (e.g. |
point.color |
Character vector with a color name (e.g. "red4"). Default: |
verbose |
Logical, if TRUE the plot is printed. Default: |
Details
All variables that are not a
or b
in a response curve are set to the values of their respective quantiles to plot the response surfaces. The output list can be plotted all at once with patchwork::wrap_plots(p)
or cowplot::plot_grid(plotlist = p)
, or one by one by extracting each plot from the list.
Value
A list with slots named after the selected quantiles
, each one with a ggplot.
See Also
Examples
if(interactive()){
#load example data
data(plant_richness_df)
#fit random forest model
out <- rf(
data = plant_richness_df,
dependent.variable.name = "richness_species_vascular",
predictor.variable.names = colnames(plant_richness_df)[5:21],
n.cores = 1,
verbose = FALSE
)
#plot interactions between most important predictors
plot_response_surfaces(x = out)
}