Fetches feature information from natively supported models
Fetches feature information from natively supported models
This function is used to extract the feature information from the model to be checked against the corresponding feature information in the data passed to explain().
NOTE: You should never need to call this function explicitly. It is exported just to be easier accessible for users, see details.
get_model_specs(x)## Default S3 method:get_model_specs(x)## S3 method for class 'ar'get_model_specs(x)## S3 method for class 'Arima'get_model_specs(x)## S3 method for class 'forecast_ARIMA'get_model_specs(x)## S3 method for class 'glm'get_model_specs(x)## S3 method for class 'lm'get_model_specs(x)## S3 method for class 'gam'get_model_specs(x)## S3 method for class 'ranger'get_model_specs(x)## S3 method for class 'workflow'get_model_specs(x)## S3 method for class 'xgb.Booster'get_model_specs(x)
Arguments
x: Model object for the model to be explained.
Returns
A list with the following elements:
labels: character vector with the feature names to compute Shapley values for
classes: a named character vector with the labels as names and the class type as elements
factor_levels: a named list with the labels as names and character vectors with the factor levels as elements (NULL if the feature is not a factor)
Details
If you are explaining a model not supported natively, you may (optionally) enable such checking by creating this function yourself and passing it on to explain().
Examples
# Load example datadata("airquality")airquality <- airquality[complete.cases(airquality),]# Split data into test- and training datax_train <- head(airquality,-3)x_explain <- tail(airquality,3)# Fit a linear modelmodel <- lm(Ozone ~ Solar.R + Wind + Temp + Month, data = x_train)get_model_specs(model)
See Also
For model classes not supported natively, you NEED to create an analogue to predict_model(). See it's help file for details.