forked from moreo/QuaPy
fixing ifcb and documenting
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@ -17,7 +17,7 @@ Change Log 0.1.8
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As a result, a method with a param grid of 10 combinations for the classifier and 10 combinations for the
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As a result, a method with a param grid of 10 combinations for the classifier and 10 combinations for the
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quantifier, now implies 10 trainings of the classifier + 10*10 trainings of the aggregation function (this is
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quantifier, now implies 10 trainings of the classifier + 10*10 trainings of the aggregation function (this is
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typically much faster than the classifier training), whereas in versions <0.1.8 this amounted to training
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typically much faster than the classifier training), whereas in versions <0.1.8 this amounted to training
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10*10 classifiers+aggregations.
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10*10 (classifiers+aggregations).
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- Added different solvers for ACC and PACC quantifiers. In quapy < 0.1.8 these quantifiers try to solve the system
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- Added different solvers for ACC and PACC quantifiers. In quapy < 0.1.8 these quantifiers try to solve the system
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of equations Ax=B exactly (by means of np.linalg.solve). As noted by Mirko Bunse (thanks!), such an exact solution
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of equations Ax=B exactly (by means of np.linalg.solve). As noted by Mirko Bunse (thanks!), such an exact solution
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@ -1,6 +1,8 @@
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import os
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import os
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import pandas as pd
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import pandas as pd
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import math
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import math
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from quapy.data import LabelledCollection
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from quapy.protocol import AbstractProtocol
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from quapy.protocol import AbstractProtocol
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from pathlib import Path
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from pathlib import Path
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@ -57,7 +59,7 @@ class IFCBTrainSamplesFromDir(AbstractProtocol):
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# all columns but the first where we get the class
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# all columns but the first where we get the class
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X = s.iloc[:, 1:].to_numpy()
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X = s.iloc[:, 1:].to_numpy()
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y = s.iloc[:, 0].to_numpy()
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y = s.iloc[:, 0].to_numpy()
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yield X, y
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yield LabelledCollection(X, y, classes=self.classes)
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def total(self):
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def total(self):
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"""
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"""
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@ -810,16 +810,7 @@ def fetch_IFCB(single_sample_train=True, for_model_selection=False, data_home=No
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# In the case the user wants it, join all the train samples in one LabelledCollection
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# In the case the user wants it, join all the train samples in one LabelledCollection
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if single_sample_train:
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if single_sample_train:
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X, y = [], []
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train = LabelledCollection.join(*[lc for lc in train_gen()])
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for X_, y_ in train_gen():
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X.append(X_)
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y.append(y_)
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X = np.vstack(X)
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y = np.concatenate(y)
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train = LabelledCollection(X, y, classes = classes)
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return train, test_gen
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return train, test_gen
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else:
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else:
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return train_gen, test_gen
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return train_gen, test_gen
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