def train_lr(densities_pos, densities_neg, uncerts_pos, uncerts_neg):
"""
TODO
:param densities_pos:
:param densities_neg:
:param uncerts_pos:
:param uncerts_neg:
:return:
"""
values_neg = np.concatenate(
(densities_neg.reshape((1, -1)),
uncerts_neg.reshape((1, -1))),
axis=0).transpose([1, 0])
values_pos = np.concatenate(
(densities_pos.reshape((1, -1)),
uncerts_pos.reshape((1, -1))),
axis=0).transpose([1, 0])
values = np.concatenate((values_neg, values_pos))
labels = np.concatenate(
(np.zeros_like(densities_neg), np.ones_like(densities_pos)))
lr = LogisticRegressionCV(n_jobs=-1).fit(values, labels)
return values, labels, lr
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