I am trying to implement an AUC metric for Keras so that I have AUC measurement after my validation set runs during a
I define the metric as such:
def auc(y_true, y_pred): keras.backend.get_session().run(tf.global_variables_initializer()) keras.backend.get_session().run(tf.initialize_all_variables()) keras.backend.get_session().run(tf.initialize_local_variables()) #return K.variable(value=tf.contrib.metrics.streaming_auc( # y_pred, y_true), dtype='float32') return tf.contrib.metrics.streaming_auc(y_pred, y_true)
This results in the following error which I don't know understand.
tensorflow.python.framework.errors_impl.FailedPreconditionError: Attempting to use uninitialized value auc/true_positives...
From online reading, it seems that the problem is 2-fold, a bug in tensorflow/keras and partially and issue with tensorflow being unable to initialize local variables from inference. Given these 2 issues, I do not see why I get this error or how to overcome it. Any suggestions?
I wrote two other metrics that work just fine:
# PFA, prob false alert for binary classifier def binary_PFA(y_true, y_pred, threshold=K.variable(value=0.5)): y_pred = K.cast(y_pred >= threshold, 'float32') # N = total number of negative labels N = K.sum(1 - y_true) # FP = total number of false alerts, alerts from the negative class labels FP = K.sum(y_pred - y_pred * y_true) return FP/N # P_TA prob true alerts for binary classifier def binary_PTA(y_true, y_pred, threshold=K.variable(value=0.5)): y_pred = K.cast(y_pred >= threshold, 'float32') # P = total number of positive labels P = K.sum(y_true) # TP = total number of correct alerts, alerts from the positive class labels TP = K.sum(y_pred * y_true) return TP/P