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Classifier.py
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Created
Mon, Nov 4, 03:22
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2 KB
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text/x-python
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Wed, Nov 6, 03:22 (1 d, 5 h)
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blob
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Raw Data
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22124195
Attached To
R11789 DED Contrastive Learning
Classifier.py
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import
numpy
as
np
import
pandas
as
pd
import
matplotlib.pyplot
as
plt
from
sklearn.ensemble
import
RandomForestClassifier
from
sklearn.metrics
import
confusion_matrix
from
sklearn.metrics
import
classification_report
,
confusion_matrix
import
itertools
import
os
from
sklearn
import
metrics
import
pydot
import
collections
import
pydotplus
import
os
import
pydotplus
from
sklearn.metrics
import
plot_confusion_matrix
from
sklearn.model_selection
import
RandomizedSearchCV
from
sklearn.feature_selection
import
SelectFromModel
import
joblib
from
sklearn.model_selection
import
cross_val_score
from
IPython.display
import
Image
from
sklearn.preprocessing
import
StandardScaler
from
sklearn.model_selection
import
train_test_split
# implementing train-test-split
from
sklearn.metrics
import
classification_report
,
confusion_matrix
from
sklearn.neural_network
import
MLPClassifier
from
sklearn.decomposition
import
PCA
from
sklearn.model_selection
import
train_test_split
from
sklearn.linear_model
import
LogisticRegression
from
Plots
import
*
#%%
def
LR
(
X_train
,
X_test
,
y_train
,
y_test
):
model
=
LogisticRegression
(
max_iter
=
1000
,
random_state
=
123
)
model
.
fit
(
X_train
,
y_train
)
predictions
=
model
.
predict
(
X_test
)
print
(
"LogisticRegression Accuracy:"
,
metrics
.
accuracy_score
(
y_test
,
predictions
))
print
(
classification_report
(
y_test
,
predictions
))
print
(
confusion_matrix
(
y_test
,
predictions
))
graph_name1
=
'LR'
+
'_without normalization w/o Opt'
graph_name2
=
'Logistic Regression'
graph_1
=
'LR'
+
'_Confusion_Matrix'
+
'_'
+
'No_Opt'
+
'.png'
graph_2
=
'LR'
+
'_Confusion_Matrix'
+
'_'
+
'Opt'
+
'.png'
titles_options
=
[(
graph_name1
,
None
,
graph_1
),
(
graph_name2
,
'true'
,
graph_2
)]
for
title
,
normalize
,
graphname
in
titles_options
:
plt
.
figure
(
figsize
=
(
20
,
10
),
dpi
=
400
)
disp
=
plot_confusion_matrix
(
model
,
X_test
,
y_test
,
display_labels
=
[
'P1'
,
'P2'
,
'P3'
,
'P4'
,
'P5'
,
'P6'
],
cmap
=
plt
.
cm
.
RdPu
,
xticks_rotation
=
'vertical'
,
normalize
=
normalize
)
plt
.
title
(
title
,
size
=
12
)
plt
.
savefig
(
graphname
,
bbox_inches
=
'tight'
,
dpi
=
400
)
savemodel
=
'LR'
+
'_model'
+
'.sav'
joblib
.
dump
(
model
,
savemodel
)
#%%
train_embeddings
=
'train_embeddings'
+
'_'
+
'.npy'
train_labelsname
=
'train_labels'
+
'_'
+
'.npy'
test_embeddings
=
'test_embeddings'
+
'_'
+
'.npy'
test_labelsname
=
'test_labels'
+
'_'
+
'.npy'
X_train
=
np
.
load
(
train_embeddings
)
.
astype
(
np
.
float64
)
y_train
=
np
.
load
(
train_labelsname
)
.
astype
(
np
.
float64
)
y_train
=
Dataframe_Manipulation_Classifier
(
y_train
)
X_test
=
np
.
load
(
test_embeddings
)
.
astype
(
np
.
float64
)
y_test
=
np
.
load
(
test_labelsname
)
.
astype
(
np
.
float64
)
y_test
=
Dataframe_Manipulation_Classifier
(
y_test
)
#%%
LR
(
X_train
,
X_test
,
y_train
,
y_test
)
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