Commit e97c990a authored by Joaquin Torres's avatar Joaquin Torres

regen hyperparam excel

parent 05a028e5
......@@ -149,7 +149,7 @@ if __name__ == "__main__":
# Use group of models with class weight if needed
models = models_CS if j == 1 else models_simple
# Save results: params and best score for each of the mdodels of this method and group
hyperparam_df = pd.DataFrame(index=list(models.keys()), columns=['Parameters','Score'])
hyperparam_df = pd.DataFrame(index=list(models.keys()), columns=['Best Parameters','Best Precision', 'Mean Precision', 'SD'])
for model_name, model in models.items():
print(f"{group}-{method_names[j]}-{model_name}")
# Find optimal hyperparams for curr model
......@@ -158,11 +158,18 @@ if __name__ == "__main__":
search.fit(X,y)
# Access the results
results = search.cv_results_
hyperparam_df.at[model_name,'Parameters']=search.best_params_
hyperparam_df.at[model_name,'Best Precision']=round(search.best_score_,4)
hyperparam_df.at[model_name,'Mean Precision']= np.mean(results['mean_test_score'])
hyperparam_df.at[model_name,'SD']= np.std(results['std_test_score'])
# Best parameters and best score directly accessible
hyperparam_df.at[model_name, 'Best Parameters'] = search.best_params_
hyperparam_df.at[model_name, 'Best Precision'] = round(search.best_score_, 4)
# Finding the index for the best set of parameters
best_index = search.best_index_
# Accessing the mean and std of the test score specifically for the best parameters
mean_precision_best = results['mean_test_score'][best_index]
std_precision_best = results['std_test_score'][best_index]
# Storing these values
hyperparam_df.at[model_name, 'Mean Precision'] = mean_precision_best
hyperparam_df.at[model_name, 'SD'] = std_precision_best
# Store the DataFrame in the dictionary with a unique key for each sheet
sheet_name = f"{group}_{method_names[j]}"
sheets_dict[sheet_name] = hyperparam_df
......
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