Probabilistic Efficiency Analysis Using Explainable Artificial Intelligence


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Documentation for package ‘PEAXAI’ version 0.1.0

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convex_facets Create New SMOTE Units to Balance Data combinations of m + s
data Simulated efficiency dataset (100 DMUs)
find_beta_maxmin Search Range for Directional Efficiency Parameter (beta)
firms Spanish Food Industry Firms Dataset
get_SMOTE_DMUs Create New SMOTE Units to Balance Data combinations of m + s
label_efficiency Data preprocessing and efficiency labeling with Additive DEA
PEAXAI_fitting Training Classification Models to Estimate Efficiency
PEAXAI_global_importance Global feature importance for efficiency classifiers
PEAXAI_peer Identify Benchmark Peers Based on Estimated Efficiency Probabilities
PEAXAI_ranking Generate Efficiency Rankings Based on Probabilistic Classification
PEAXAI_targets Projection-Based Efficiency Targets
preprocessing Prepare Data and Handle Errors
SMOTE_data Create New SMOTE Units to Balance Data combinations of m + s
train_PEAXAI Training a Classification Machine Learning Model
xai_prepare_sets Prepare Training and Target Datasets from a caret Model