Commit c556b024 authored by Joaquin Torres's avatar Joaquin Torres

minor fixes

parent b7ae7c60
......@@ -12,9 +12,7 @@
import pandas as pd
import numpy as np
from xgboost import XGBClassifier
from sklearn.metrics import confusion_matrix
from sklearn.metrics import f1_score, make_scorer, precision_score, recall_score
from sklearn.model_selection import StratifiedKFold, cross_validate
from sklearn.model_selection import StratifiedKFold
from sklearn.ensemble import RandomForestClassifier, BaggingClassifier, AdaBoostClassifier
from sklearn.neural_network import MLPClassifier
from sklearn.svm import SVC
......@@ -24,17 +22,11 @@ from scipy.stats import randint, uniform
from sklearn.model_selection import RandomizedSearchCV
# --------------------------------------------------------------------------------------------------------
# Function to read datasets
# Function to read training datasets
# --------------------------------------------------------------------------------------------------------
def read_data():
import numpy as np
# Load test data
X_test_pre = np.load('../gen_train_data/data/output/pre/X_test_pre.npy', allow_pickle=True)
y_test_pre = np.load('../gen_train_data/data/output/pre/y_test_pre.npy', allow_pickle=True)
X_test_post = np.load('../gen_train_data/data/output/post/X_test_post.npy', allow_pickle=True)
y_test_post = np.load('../gen_train_data/data/output/post/y_test_post.npy', allow_pickle=True)
# Load ORIGINAL training data
X_train_pre = np.load('../gen_train_data/data/output/pre/X_train_pre.npy', allow_pickle=True)
y_train_pre = np.load('../gen_train_data/data/output/pre/y_train_pre.npy', allow_pickle=True)
......@@ -54,10 +46,6 @@ def read_data():
y_train_under_post = np.load('../gen_train_data/data/output/post/y_train_under_post.npy', allow_pickle=True)
data_dic = {
"X_test_pre": X_test_pre,
"y_test_pre": y_test_pre,
"X_test_post": X_test_post,
"y_test_post": y_test_post,
"X_train_pre": X_train_pre,
"y_train_pre": y_train_pre,
"X_train_post": X_train_post,
......@@ -83,28 +71,29 @@ if __name__ == "__main__":
# Defining the models to train
# --------------------------------------------------------------------------------------------------------
# 1. No class weight
models_1 = {"DT" : DecisionTreeClassifier(),
models_simple = {"DT" : DecisionTreeClassifier(),
"RF" : RandomForestClassifier(),
"Bagging" : BaggingClassifier(),
"AB" : AdaBoostClassifier(algorithm='SAMME'),
"XGB": XGBClassifier(),
"LR" : LogisticRegression(max_iter=1000),
# "ElNet" : LogisticRegression(max_iter=1000, penalty='elasticnet'),
"SVM" : SVC(probability=True),
"MLP" : MLPClassifier(max_iter=500)
# "ElNet" : LogisticRegression(max_iter=1000, penalty='elasticnet')
}
# 2. Class weight: cost-sensitive learning
models_2 = {"DT" : DecisionTreeClassifier(class_weight='balanced'),
models_CS = {"DT" : DecisionTreeClassifier(class_weight='balanced'),
"RF" : RandomForestClassifier(class_weight='balanced'),
"Bagging" : BaggingClassifier(estimator= DecisionTreeClassifier(class_weight='balanced')),
"AB" : AdaBoostClassifier(estimator= DecisionTreeClassifier(class_weight='balanced'), algorithm='SAMME'),
# "XGB": XGBClassifier(), # <-
"LR" : LogisticRegression(max_iter=1000, class_weight='balanced'),
# "ElNet" : LogisticRegression(max_iter=1000, penalty='elasticnet', class_weight='balanced'),
"SVM" : SVC(probability=True, class_weight='balanced'),
# "ElNet" : LogisticRegression(max_iter=1000, penalty='elasticnet', class_weight='balanced'),
# "XGB": XGBClassifier(), # <-
# "MLP" : MLPClassifier(max_iter=500) # <-
}
# --------------------------------------------------------------------------------------------------------
# Hyperparameter tuning setup
# --------------------------------------------------------------------------------------------------------
......@@ -126,12 +115,12 @@ if __name__ == "__main__":
'learning_rate': uniform(0.01, 0.3)},
"LR": {'penalty': ['l1', 'l2', 'elasticnet', None],
'solver': ['lbfgs', 'sag', 'saga']},
# "ElNet": {'solver': ['lbfgs', 'sag', 'saga']},
"SVM": {'C': uniform(0.8, 1.2),
'kernel': ['linear', 'poly', 'rbf', 'sigmoid']},
"MLP": {'activation': ['identity', 'logistic', 'tanh', 'relu'],
'hidden_layer_sizes': randint(50, 150),
'learning_rate': ['constant', 'invscaling', 'adaptive']}
# "ElNet": {'solver': ['lbfgs', 'sag', 'saga']},
}
# --------------------------------------------------------------------------------------------------------
......@@ -151,20 +140,20 @@ if __name__ == "__main__":
# --------------------------------------------------------------------------------------------------------
# Store each df as a sheet in an excel file
sheets_dict = {}
for i, group in enumerate(['pre', 'post']):
for i, group in enumerate(['pre']):
for j, method in enumerate(['', '', 'over_', 'under_']):
# Get dataset based on group and method
X = data_dic['X_train_' + method + group]
y = data_dic['y_train_' + method + group]
# Use group of models with class weight if needed
models = models_2 if j == 2 else models_1
models = models_CS if j == 2 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'])
for model_name, model in models.items():
print(f"{group}-{method}-{model_name} \n\n")
# Find optimal hyperparams for curr model
params = hyperparameters[model_name]
search = RandomizedSearchCV(model, param_distributions=params, cv=cv, n_jobs=1, scoring='precision')
search = RandomizedSearchCV(model, param_distributions=params, cv=cv, n_jobs=3, scoring='precision')
search.fit(X,y)
hyperparam_df.at[model_name,'Parameters']=search.best_params_
hyperparam_df.at[model_name,'Score']=round(search.best_score_,4)
......
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