plot_model_fit | R Documentation |
Plot model fit against human error data (target errors)
plot_model_fit(
participant_data,
model_fit,
model,
unit = "degrees",
id_var = "id",
response_var = "response",
target_var = "target",
set_size_var = NULL,
condition_var = NULL,
n_bins = 18,
n_col = 2,
palette = "Dark2"
)
participant_data |
A data frame of the participant data, with columns containing: participant identifier ('id_var'); the participants' response per trial ('response_var'); the target value ('target_var'); and, if applicable, the set size of each response ('set_size_var'), and the condition of each response ('condition_var'). |
model_fit |
The model fit object to be plotted against participant data. |
model |
A string indicating the model that was fit to the data. Currently the options are "2_component", "3_component", "slots", and "slots_averaging". |
unit |
The unit of measurement in the data frame: "degrees" (measurement is in degrees, from 0 to 360); "degrees_180 (measurement is in degrees, but limited to 0 to 180); or "radians" (measurement is in radians, from pi to 2 * pi, but could also be already in -pi to pi). |
id_var |
The column name coding for participant id. If the data is from a single participant (i.e., there is no id column) set to "NULL". |
response_var |
The column name coding for the participants' responses |
target_var |
The column name coding for the target value |
set_size_var |
The column name (if applicable) coding for the set size of each response |
condition_var |
The column name (if applicable) coding for the condition of each response |
n_bins |
An integer controlling the number of cells / bins used in the plot of the behavioural data. |
n_col |
An integer controlling the number of columns in the resulting plot. |
palette |
A character stating the preferred colour palette to use. To see all available palettes, type ?scale_colour_brewer into the console. |
The function returns a ggplot2 object visualising the mean observed response error density distribution across participants (if applicable) per set-size (if applicable) and condition (if applicable) together with the model predictions superimposed.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.