From 1d12e9686786681c4ade580987336d4a9f2e1898 Mon Sep 17 00:00:00 2001 From: Alex Moreo Date: Wed, 28 Apr 2021 11:27:25 +0200 Subject: [PATCH] cleaning --- quapy/method/aggregative.py | 5 ----- 1 file changed, 5 deletions(-) diff --git a/quapy/method/aggregative.py b/quapy/method/aggregative.py index 31a061c..34a10eb 100644 --- a/quapy/method/aggregative.py +++ b/quapy/method/aggregative.py @@ -352,7 +352,6 @@ class EMQ(AggregativeProbabilisticQuantifier): @classmethod def EM(cls, tr_prev, posterior_probabilities, epsilon=EPSILON): - #print('training-priors', tr_prev) Px = posterior_probabilities Ptr = np.copy(tr_prev) qs = np.copy(Ptr) # qs (the running estimate) is initialized as the training prevalence @@ -360,12 +359,9 @@ class EMQ(AggregativeProbabilisticQuantifier): s, converged = 0, False qs_prev_ = None while not converged and s < EMQ.MAX_ITER: - #print('iter: ', s) # E-step: ps is Ps(y|xi) ps_unnormalized = (qs / Ptr) * Px ps = ps_unnormalized / ps_unnormalized.sum(axis=1, keepdims=True) - #print(f'\tratio=', qs / Ptr) - #print(f'\torigin_posteriors ', Px) # M-step: qs = ps.mean(axis=0) @@ -468,7 +464,6 @@ class ELM(AggregativeQuantifier, BinaryQuantifier): return self.learner.predict(X) - class SVMQ(ELM): """ Barranquero, J., Díez, J., and del Coz, J. J. (2015).