Commit 20a35749 authored by Joaquin Torres's avatar Joaquin Torres

Thinking about merging scroings and plots

parent 18034aa8
......@@ -175,8 +175,8 @@ if __name__ == "__main__":
# Metric generation through cv for tuned models3
# --------------------------------------------------------------------------------------------------------
scores_sheets = {} # To store score dfs as sheets in the same excel file
for i, group in enumerate(['pre']): # 'post'
for j, method in enumerate(['']): # '', 'over_', 'under_'
for i, group in enumerate(['pre', 'post']): # 'post'
for j, method in enumerate(['', 'over_', 'under_']):
# Get train dataset based on group and method
X_train = data_dic['X_train_' + method + group]
y_train = data_dic['y_train_' + method + group]
......@@ -190,59 +190,58 @@ if __name__ == "__main__":
axes = [axes]
# Metric generation for each model
for model_idx, (model_name, model) in enumerate(models.items()):
if model_name == 'XGB':
print(f"{group}-{method_names[j]}-{model_name}")
# Retrieve cv scores for our metrics of interest
scores = cross_validate(model, X_train, y_train, scoring=scorings, cv=cv, return_train_score=True, n_jobs=10)
# Save results of each fold
for metric_name in scorings.keys():
scores_df.loc[model_name + f'_{metric_name}']=list(np.around(np.array(scores[f"test_{metric_name}"]),4))
# ---------------------------------------- Generate curves ----------------------------------------
mean_fpr = np.linspace(0, 1, 100)
tprs, aucs = [], []
mean_recall = np.linspace(0, 1, 100)
precisions, pr_aucs = [], []
cmap = plt.get_cmap('tab10') # Colormap
# Loop through each fold in the cross-validation
for fold_idx, (train, test) in enumerate(cv.split(X_train, y_train)):
# Fit the model on the training data
model.fit(X_train[train], y_train[train])
# Generate ROC curve for the fold
roc_display = RocCurveDisplay.from_estimator(model, X_train[test], y_train[test],
name=f"ROC fold {fold_idx}", alpha=0.6, lw=2,
ax=axes[model_idx][0], color=cmap(fold_idx % 10))
interp_tpr = np.interp(mean_fpr, roc_display.fpr, roc_display.tpr)
interp_tpr[0] = 0.0
tprs.append(interp_tpr)
aucs.append(roc_display.roc_auc)
# Generate Precision-Recall curve for the fold
pr_display = PrecisionRecallDisplay.from_estimator(model, X_train[test], y_train[test],
name=f"PR fold {fold_idx}", alpha=0.6, lw=2,
ax=axes[model_idx][1], color=cmap(fold_idx % 10))
interp_precision = np.interp(mean_recall, pr_display.recall[::-1], pr_display.precision[::-1])
precisions.append(interp_precision)
pr_aucs.append(pr_display.average_precision)
# Plot diagonal line for random guessing in ROC curve
axes[model_idx][0].plot([0, 1], [0, 1], linestyle='--', lw=2, color='r', alpha=.8, label='Random guessing')
# Compute mean ROC curve
mean_tpr = np.mean(tprs, axis=0)
mean_tpr[-1] = 1.0
mean_auc = auc(mean_fpr, mean_tpr)
axes[model_idx][0].plot(mean_fpr, mean_tpr, color='b', lw=4, label=r'Mean ROC (AUC = %0.2f)' % mean_auc, alpha=.8)
# Set ROC plot limits and title
axes[model_idx][0].set(xlim=[-0.05, 1.05], ylim=[-0.05, 1.05], title=f"ROC Curve - {model_name} ({group}-{method_names[j]})")
axes[model_idx][0].legend(loc="lower right")
# Compute mean Precision-Recall curve
mean_precision = np.mean(precisions, axis=0)
mean_pr_auc = np.mean(pr_aucs)
axes[model_idx][1].plot(mean_recall, mean_precision, color='b', lw=4, label=r'Mean PR (AUC = %0.2f)' % mean_pr_auc, alpha=.8)
# Plot baseline precision (proportion of positive samples)
baseline = np.sum(y_train) / len(y_train)
axes[model_idx][1].plot([0, 1], [baseline, baseline], linestyle='--', lw=2, color='r', alpha=.8, label='Baseline')
# Set Precision-Recall plot limits and title
axes[model_idx][1].set(xlim=[-0.05, 1.05], ylim=[-0.05, 1.05], title=f"Precision-Recall Curve - {model_name} ({group}-{method_names[j]})")
axes[model_idx][1].legend(loc="lower right")
# ---------------------------------------- End Generate Curves ----------------------------------------
print(f"{group}-{method_names[j]}-{model_name}")
# Retrieve cv scores for our metrics of interest
scores = cross_validate(model, X_train, y_train, scoring=scorings, cv=cv, return_train_score=True, n_jobs=10)
# Save results of each fold
for metric_name in scorings.keys():
scores_df.loc[model_name + f'_{metric_name}']=list(np.around(np.array(scores[f"test_{metric_name}"]),4))
# ---------------------------------------- Generate curves ----------------------------------------
mean_fpr = np.linspace(0, 1, 100)
tprs, aucs = [], []
mean_recall = np.linspace(0, 1, 100)
precisions, pr_aucs = [], []
cmap = plt.get_cmap('tab10') # Colormap
# Loop through each fold in the cross-validation
for fold_idx, (train, test) in enumerate(cv.split(X_train, y_train)):
# Fit the model on the training data
model.fit(X_train[train], y_train[train])
# Generate ROC curve for the fold
roc_display = RocCurveDisplay.from_estimator(model, X_train[test], y_train[test],
name=f"ROC fold {fold_idx}", alpha=0.6, lw=2,
ax=axes[model_idx][0], color=cmap(fold_idx % 10))
interp_tpr = np.interp(mean_fpr, roc_display.fpr, roc_display.tpr)
interp_tpr[0] = 0.0
tprs.append(interp_tpr)
aucs.append(roc_display.roc_auc)
# Generate Precision-Recall curve for the fold
pr_display = PrecisionRecallDisplay.from_estimator(model, X_train[test], y_train[test],
name=f"PR fold {fold_idx}", alpha=0.6, lw=2,
ax=axes[model_idx][1], color=cmap(fold_idx % 10))
interp_precision = np.interp(mean_recall, pr_display.recall[::-1], pr_display.precision[::-1])
precisions.append(interp_precision)
pr_aucs.append(pr_display.average_precision)
# Plot diagonal line for random guessing in ROC curve
axes[model_idx][0].plot([0, 1], [0, 1], linestyle='--', lw=2, color='r', alpha=.8, label='Random guessing')
# Compute mean ROC curve
mean_tpr = np.mean(tprs, axis=0)
mean_tpr[-1] = 1.0
mean_auc = auc(mean_fpr, mean_tpr)
axes[model_idx][0].plot(mean_fpr, mean_tpr, color='b', lw=4, label=r'Mean ROC (AUC = %0.2f)' % mean_auc, alpha=.8)
# Set ROC plot limits and title
axes[model_idx][0].set(xlim=[-0.05, 1.05], ylim=[-0.05, 1.05], title=f"ROC Curve - {model_name} ({group}-{method_names[j]})")
axes[model_idx][0].legend(loc="lower right")
# Compute mean Precision-Recall curve
mean_precision = np.mean(precisions, axis=0)
mean_pr_auc = np.mean(pr_aucs)
axes[model_idx][1].plot(mean_recall, mean_precision, color='b', lw=4, label=r'Mean PR (AUC = %0.2f)' % mean_pr_auc, alpha=.8)
# Plot baseline precision (proportion of positive samples)
baseline = np.sum(y_train) / len(y_train)
axes[model_idx][1].plot([0, 1], [baseline, baseline], linestyle='--', lw=2, color='r', alpha=.8, label='Baseline')
# Set Precision-Recall plot limits and title
axes[model_idx][1].set(xlim=[-0.05, 1.05], ylim=[-0.05, 1.05], title=f"Precision-Recall Curve - {model_name} ({group}-{method_names[j]})")
axes[model_idx][1].legend(loc="lower right")
# ---------------------------------------- End Generate Curves ----------------------------------------
# Store the DataFrame in the dictionary with a unique key for each sheet
sheet_name = f"{group}_{method_names[j]}"
scores_sheets[sheet_name] = scores_df
......
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