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COMPARA
covid_analysis
Commits
f0c96956
Commit
f0c96956
authored
May 24, 2024
by
Joaquin Torres
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Trying to integrate scoring within cv loop manually
parent
20a35749
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model_selection/cv_metric_gen.py
model_selection/cv_metric_gen.py
+30
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model_selection/cv_metric_gen.py
View file @
f0c96956
...
@@ -191,23 +191,40 @@ if __name__ == "__main__":
...
@@ -191,23 +191,40 @@ if __name__ == "__main__":
# Metric generation for each model
# Metric generation for each model
for
model_idx
,
(
model_name
,
model
)
in
enumerate
(
models
.
items
()):
for
model_idx
,
(
model_name
,
model
)
in
enumerate
(
models
.
items
()):
print
(
f
"{group}-{method_names[j]}-{model_name}"
)
print
(
f
"{group}-{method_names[j]}-{model_name}"
)
# Retrieve cv scores for our metrics of interest
# # 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
)
# scores = cross_validate(model, X_train, y_train, scoring=scorings, cv=cv, return_train_score=True, n_jobs=10)
# Save results of each fold
# # Save results of each fold
for
metric_name
in
scorings
.
keys
():
# 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
))
# 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
)
mean_fpr
=
np
.
linspace
(
0
,
1
,
100
)
tprs
,
aucs
=
[],
[]
tprs
,
aucs
=
[],
[]
mean_recall
=
np
.
linspace
(
0
,
1
,
100
)
mean_recall
=
np
.
linspace
(
0
,
1
,
100
)
precisions
,
pr_aucs
=
[],
[]
precisions
,
pr_aucs
=
[],
[]
cmap
=
plt
.
get_cmap
(
'tab10'
)
# Colormap
cmap
=
plt
.
get_cmap
(
'tab10'
)
# Colormap
# Initialize storage for scores for each fold
fold_scores
=
{
metric_name
:
[]
for
metric_name
in
scorings
.
keys
()}
# Loop through each fold in the cross-validation
# Loop through each fold in the cross-validation
for
fold_idx
,
(
train
,
test
)
in
enumerate
(
cv
.
split
(
X_train
,
y_train
)):
for
fold_idx
,
(
train_idx
,
test_idx
)
in
enumerate
(
cv
.
split
(
X_train
,
y_train
)):
X_train_fold
,
X_test_fold
=
X_train
[
train_idx
],
X_train
[
test_idx
]
y_train_fold
,
y_test_fold
=
y_train
[
train_idx
],
y_train
[
test_idx
]
# Fit the model on the training data
# Fit the model on the training data
model
.
fit
(
X_train
[
train
],
y_train
[
train
])
model
.
fit
(
X_train_fold
,
y_train_fold
)
# Predict on the test data
if
hasattr
(
model
,
"decision_function"
):
y_score
=
model
.
decision_function
(
X_test_fold
)
else
:
y_score
=
model
.
predict_proba
(
X_test_fold
)[:,
1
]
# Use probability of positive class
y_pred
=
model
.
predict
(
X_test_fold
)
# Calculate and store the scores for each metric
for
metric_name
,
scorer
in
scorings
.
items
():
if
metric_name
in
[
'AUROC'
,
'AUPRC'
]:
score
=
scorer
.
_score_func
(
y_test_fold
,
y_score
)
else
:
score
=
scorer
.
_score_func
(
y_test_fold
,
y_pred
)
fold_scores
[
metric_name
]
.
append
(
score
)
# --------------------- CURVES ---------------------------
# Generate ROC curve for the fold
# Generate ROC curve for the fold
roc_display
=
RocCurveDisplay
.
from_estimator
(
model
,
X_t
rain
[
test
],
y_train
[
test
]
,
roc_display
=
RocCurveDisplay
.
from_estimator
(
model
,
X_t
est_fold
,
y_test_fold
,
name
=
f
"ROC fold {fold_idx}"
,
alpha
=
0.6
,
lw
=
2
,
name
=
f
"ROC fold {fold_idx}"
,
alpha
=
0.6
,
lw
=
2
,
ax
=
axes
[
model_idx
][
0
],
color
=
cmap
(
fold_idx
%
10
))
ax
=
axes
[
model_idx
][
0
],
color
=
cmap
(
fold_idx
%
10
))
interp_tpr
=
np
.
interp
(
mean_fpr
,
roc_display
.
fpr
,
roc_display
.
tpr
)
interp_tpr
=
np
.
interp
(
mean_fpr
,
roc_display
.
fpr
,
roc_display
.
tpr
)
...
@@ -215,12 +232,15 @@ if __name__ == "__main__":
...
@@ -215,12 +232,15 @@ if __name__ == "__main__":
tprs
.
append
(
interp_tpr
)
tprs
.
append
(
interp_tpr
)
aucs
.
append
(
roc_display
.
roc_auc
)
aucs
.
append
(
roc_display
.
roc_auc
)
# Generate Precision-Recall curve for the fold
# Generate Precision-Recall curve for the fold
pr_display
=
PrecisionRecallDisplay
.
from_estimator
(
model
,
X_t
rain
[
test
],
y_train
[
test
]
,
pr_display
=
PrecisionRecallDisplay
.
from_estimator
(
model
,
X_t
est_fold
,
y_test_fold
,
name
=
f
"PR fold {fold_idx}"
,
alpha
=
0.6
,
lw
=
2
,
name
=
f
"PR fold {fold_idx}"
,
alpha
=
0.6
,
lw
=
2
,
ax
=
axes
[
model_idx
][
1
],
color
=
cmap
(
fold_idx
%
10
))
ax
=
axes
[
model_idx
][
1
],
color
=
cmap
(
fold_idx
%
10
))
interp_precision
=
np
.
interp
(
mean_recall
,
pr_display
.
recall
[::
-
1
],
pr_display
.
precision
[::
-
1
])
interp_precision
=
np
.
interp
(
mean_recall
,
pr_display
.
recall
[::
-
1
],
pr_display
.
precision
[::
-
1
])
precisions
.
append
(
interp_precision
)
precisions
.
append
(
interp_precision
)
pr_aucs
.
append
(
pr_display
.
average_precision
)
pr_aucs
.
append
(
pr_display
.
average_precision
)
# Store the fold scores in the dataframe
for
metric_name
,
scores
in
fold_scores
.
items
():
scores_df
.
loc
[
f
"{model_name}_{metric_name}"
]
=
np
.
around
(
scores
,
4
)
# Plot diagonal line for random guessing in ROC curve
# 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'
)
axes
[
model_idx
][
0
]
.
plot
([
0
,
1
],
[
0
,
1
],
linestyle
=
'--'
,
lw
=
2
,
color
=
'r'
,
alpha
=
.8
,
label
=
'Random guessing'
)
# Compute mean ROC curve
# Compute mean ROC curve
...
@@ -241,7 +261,6 @@ if __name__ == "__main__":
...
@@ -241,7 +261,6 @@ if __name__ == "__main__":
# Set Precision-Recall plot limits and title
# 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
]
.
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"
)
axes
[
model_idx
][
1
]
.
legend
(
loc
=
"lower right"
)
# ---------------------------------------- End Generate Curves ----------------------------------------
# Store the DataFrame in the dictionary with a unique key for each sheet
# Store the DataFrame in the dictionary with a unique key for each sheet
sheet_name
=
f
"{group}_{method_names[j]}"
sheet_name
=
f
"{group}_{method_names[j]}"
scores_sheets
[
sheet_name
]
=
scores_df
scores_sheets
[
sheet_name
]
=
scores_df
...
...
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