Explaining Correlated Features in Machine Learning Models


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Documentation for package ‘triplot’ version 1.3.0

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aspect_importance Calculates importance of variable groups (called aspects) for a selected observation
aspect_importance.default Calculates importance of variable groups (called aspects) for a selected observation
aspect_importance.explainer Calculates importance of variable groups (called aspects) for a selected observation
aspect_importance_single Aspects importance for single aspects
aspect_importance_single.default Aspects importance for single aspects
aspect_importance_single.explainer Aspects importance for single aspects
calculate_triplot Calculate triplot that sums up automatic aspect/feature importance grouping
calculate_triplot.default Calculate triplot that sums up automatic aspect/feature importance grouping
calculate_triplot.explainer Calculate triplot that sums up automatic aspect/feature importance grouping
cluster_variables Creates a cluster tree from numeric features
cluster_variables.default Creates a cluster tree from numeric features
get_sample Function for getting binary matrix
group_variables Helper function that combines clustering variables and creating aspect list
hierarchical_importance Calculates importance of hierarchically grouped aspects
lime Calculates importance of variable groups (called aspects) for a selected observation
list_variables Cuts tree at custom height and returns a list
model_triplot Calculate triplot that sums up automatic aspect/feature importance grouping
plot.aspect_importance Function for plotting aspect_importance results
plot.cluster_variables Plots tree with correlation values
plot.hierarchical_importance Calculates importance of hierarchically grouped aspects
plot.triplot Plots triplot
predict_aspects Calculates importance of variable groups (called aspects) for a selected observation
predict_triplot Calculate triplot that sums up automatic aspect/feature importance grouping
print.aspect_importance Function for printing aspect_importance results
print.triplot Calculate triplot that sums up automatic aspect/feature importance grouping