def __init__(self, info, verbose=True, debug_mode=False):
self.label_num=info['label_num']
self.target_num=info['target_num']
self.task = info['task']
self.metric = info['metric']
self.postprocessor = None
#self.postprocessor = MultiLabelEnsemble(LogisticRegression(), balance=True) # To calibrate proba
self.postprocessor = MultiLabelEnsemble(LogisticRegression(), balance=False) # To calibrate proba
if debug_mode>=2:
self.name = "RandomPredictor"
self.model = RandomPredictor(self.target_num)
self.predict_method = self.model.predict_proba
return
if info['task']=='regression':
if info['is_sparse']==True:
self.name = "BaggingRidgeRegressor"
self.model = BaggingRegressor(base_estimator=Ridge(), n_estimators=1, verbose=verbose) # unfortunately, no warm start...
else:
self.name = "GradientBoostingRegressor"
self.model = GradientBoostingRegressor(n_estimators=1, max_depth=4, min_samples_split=14, verbose=verbose, warm_start = True)
self.predict_method = self.model.predict # Always predict probabilities
else:
if info['has_categorical']: # Out of lazziness, we do not convert categorical variables...
self.name = "RandomForestClassifier"
self.model = RandomForestClassifier(n_estimators=1, verbose=verbose) # unfortunately, no warm start...
elif info['is_sparse']:
self.name = "BaggingNBClassifier"
self.model = BaggingClassifier(base_estimator=BernoulliNB(), n_estimators=1, verbose=verbose) # unfortunately, no warm start...
else:
self.name = "GradientBoostingClassifier"
self.model = eval(self.name + "(n_estimators=1, verbose=" + str(verbose) + ", random_state=1, warm_start = True)")
if info['task']=='multilabel.classification':
self.model = MultiLabelEnsemble(self.model)
self.predict_method = self.model.predict_proba
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