# Libraries # -------------------------------------------------------------------------------------------------------- import pandas as pd import numpy as np import shap # -------------------------------------------------------------------------------------------------------- # Reading test data # -------------------------------------------------------------------------------------------------------- def read_test_data(attribute_names): # Load test data X_test_pre = np.load('../gen_train_data/data/output/pre/X_test_pre.npy', allow_pickle=True) y_test_pre = np.load('../gen_train_data/data/output/pre/y_test_pre.npy', allow_pickle=True) X_test_post = np.load('../gen_train_data/data/output/post/X_test_post.npy', allow_pickle=True) y_test_post = np.load('../gen_train_data/data/output/post/y_test_post.npy', allow_pickle=True) # Type conversion needed data_dic = { "X_test_pre": pd.DataFrame(X_test_pre, columns=attribute_names).convert_dtypes(), "y_test_pre": y_test_pre, "X_test_post": pd.DataFrame(X_test_post, columns=attribute_names).convert_dtypes(), "y_test_post": y_test_post, } return data_dic # -------------------------------------------------------------------------------------------------------- if __name__ == "__main__": # Setup # -------------------------------------------------------------------------------------------------------- # Retrieve attribute names in order attribute_names = list(np.load('../gen_train_data/data/output/attributes.npy', allow_pickle=True)) # Reading data data_dic = read_test_data(attribute_names) method_names = { 0: "ORIG", 1: "ORIG_CW", 2: "OVER", 3: "UNDER" } # -------------------------------------------------------------------------------------------------------- # Plot generation # -------------------------------------------------------------------------------------------------------- for i, group in enumerate(['pre', 'post']): # Get test dataset based on group, add column names X_test = data_dic['X_test_' + group] y_test = data_dic['y_test_' + group] for j, method in enumerate(['', '', 'over_', 'under_']): print(f"{group}-{method_names[j]}") method_name = method_names[j] shap_vals = np.load(f'./output/shap_values/{group}_{method_name}.npy') # print(f'Loaded SHAP values. Shape: {shap_vals.shape}') shap_inter_vals = np.load(f'./output/shap_inter_values/{group}_{method_name}.npy') # print(f'Loaded SHAP INTER values. Shape: {shap_inter_vals.shape}')