Commit 7b58b74c authored by Joaquin Torres's avatar Joaquin Torres

Progress made on shap (still pending to see predict_proba and X_train vs test)

parent aa9797c1
......@@ -110,8 +110,10 @@ def get_chosen_model(group_str, method_str, model_name):
# Initialize the model with the parameters
chosen_model = model_class(**parameters)
# Return if it is a tree model, for SHAP
is_tree = model_name not in ['LR', 'SVM', 'MLP']
return chosen_model
return chosen_model, is_tree
# --------------------------------------------------------------------------------------------------------
if __name__ == "__main__":
......@@ -133,42 +135,36 @@ if __name__ == "__main__":
"OVER": "XGB",
"UNDER": "XGB"
}
# # Retrieve attribute names in order
# df = pd.read_csv("..\gen_train_data\data\input\pre_dataset.csv")
# attribute_names = list(df.columns.values)
# Retrieve attribute names in order
df = pd.read_csv("../gen_train_data/data/input/pre_dataset.csv")
attribute_names = list(df.columns.values)
# --------------------------------------------------------------------------------------------------------
# Shap value generation
# --------------------------------------------------------------------------------------------------------
for i, group in enumerate(['pre', 'post']):
# Get test dataset based on group
X_test = data_dic['X_test_' + group]
X_test = pd.DataFrame(data_dic['X_test_' + group], columns=attribute_names)
y_test = data_dic['y_test_' + group]
for j, method in enumerate(['', '', 'over_', 'under_']):
print(f"{group}-{method_names[j]}")
# Get train dataset based on group and method
X_train = data_dic['X_train_' + method + group]
X_train = pd.DataFrame(data_dic['X_train_' + method + group], columns=attribute_names)
y_train = data_dic['y_train_' + method + group]
method_name = method_names[j]
# Get chosen tuned model for this group and method context
model = get_chosen_model(group_str=group, method_str=method_name, model_name=model_choices[method_name])
print(f'Name: {model_choices[method_name]}')
print(model.get_params())
# # --------------------------------------------------------------------------------------------------------
# # Retrieve best model for this group-method context
# model_info = models[group + '_' + method_names[j]]
# is_tree = model_info[0]
# model = model_info[1]
# # Fit model with training data
# fitted_model = model.fit(X_train[:500], y_train[:500])
# # Check if we are dealing with a tree vs nn model
# if is_tree:
# explainer = shap.TreeExplainer(fitted_model, X_test[:500])
# else:
# explainer = shap.KernelExplainer(fitted_model.predict, X_test[:500])
# # Compute shap values
# shap_vals = explainer.shap_values(X_test[:500], check_additivity=False) # Change to true for final results
# # ---------------------------------------------------------------------------------------------------------
model, is_tree = get_chosen_model(group_str=group, method_str=method_name, model_name=model_choices[method_name])
# --------------------------------------------------------------------------------------------------------
# Fit model with training data
fitted_model = model.fit(X_train[:500], y_train[:500])
# Check if we are dealing with a tree vs nn model
if is_tree:
explainer = shap.TreeExplainer(fitted_model, X_test[:500])
else:
explainer = shap.KernelExplainer(fitted_model.predict_proba, X_test[:500])
# Compute shap values
shap_vals = explainer.shap_values(X_test[:500], check_additivity=False) # Change to true for final results
# ---------------------------------------------------------------------------------------------------------
# Save results
# np.save(f"shap_values/{group}_{method_names[j]}", shap_vals)
np.save(f"./output/shap_values/{group}_{method_names[j]}", shap_vals)
# --------------------------------------------------------------------------------------------------------
\ No newline at end of file
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