I am building a multi-class classifier with Keras 2.02 (with Tensorflow backend),and I do not know how to calculate precision and recall in Keras. Please help me.


Python package keras-metrics could be useful for this (I'm the package's author).

import keras
import keras_metrics

model = models.Sequential()
model.add(keras.layers.Dense(1, activation="sigmoid", input_dim=2))
model.add(keras.layers.Dense(1, activation="softmax"))

              metrics=[keras_metrics.precision(), keras_metrics.recall()])

UPDATE: Starting with Keras version 2.3.0, such metrics as precision, recall, etc. are provided within library distribution package.

The usage is the following:

              metrics=[keras.metrics.Precision(), keras.metrics.Recall()])
  • 3
    It might be a good idea to mention that you are the author of this package, both in the interest of full disclosure of your affiliation, and to lend your answer more credibility. – Mihai Chelaru May 26 '18 at 17:00
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    @Dref360 says "As of Keras 2.0, precision and recall were removed from the master branch." -- so is this the metrics that have been removed, or can you still use keras_metric with Keras 2.0? – J.Dahlgren Jun 1 '18 at 7:26
  • pip install keras-metrics it works – chandra sutrisno Oct 11 '18 at 9:16
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    it gives precision and recall = 0.000 in Keras 2.2.2 and keras-metrics 0.0.5. I used the same code as above. But when I use the solution posted by @Christian, it return values. – DrGeneral Nov 21 '18 at 7:43
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    @DrGeneral, could you, please, provide a model and the training data you use, so I could validate what's wrong with the implementation. I recall, there is a calculation issue with Tensorflow backend with version <1.8.0. – Yasha Bubnov Nov 22 '18 at 7:48

As of Keras 2.0, precision and recall were removed from the master branch. You will have to implement them yourself. Follow this guide to create custom metrics : Here.

Precision and recall equation can be found Here

Or reuse the code from keras before it was removed Here.

There metrics were remove because they were batch-wise so the value may or may not be correct.

  • Thanks for your answer. But when I reuse the code from keras before it was removed, I get 0 for both of precision and recall value. Why? – Jimmy Du Apr 6 '17 at 9:42
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    Why have they been removed? – Alex Oct 5 '17 at 11:22
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    Please make sure that your answer is useful even if the links break. – Martin Thoma Oct 16 '17 at 6:16
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    Explanation for removing can be found here, with a solution to compute it with a callback implementation: github.com/keras-team/keras/issues/5794 – RomaneG Mar 20 '18 at 13:47
  • Is it possible to adapt the code and compute the respective metrics across the whole dataset, i.e. train and test? I see there are some solutions provided in the github thread but I cannot tell if they are, again, batch-wise or across the entire dataset – TheDude May 6 at 10:05

My answer is based on the comment of Keras GH issue. It calculates validation precision and recall at every epoch for a onehot-encoded classification task. Also please look at this SO answer to see how it can be done with keras.backend functionality.

import keras as keras
import numpy as np
from keras.optimizers import SGD
from sklearn.metrics import precision_score, recall_score

model = keras.models.Sequential()
# ...
sgd = SGD(lr=0.001, momentum=0.9)
model.compile(optimizer=sgd, loss='categorical_crossentropy', metrics=['accuracy'])

class Metrics(keras.callbacks.Callback):
    def on_train_begin(self, logs={}):
        self._data = []

    def on_epoch_end(self, batch, logs={}):
        X_val, y_val = self.validation_data[0], self.validation_data[1]
        y_predict = np.asarray(model.predict(X_val))

        y_val = np.argmax(y_val, axis=1)
        y_predict = np.argmax(y_predict, axis=1)

            'val_recall': recall_score(y_val, y_predict),
            'val_precision': precision_score(y_val, y_predict),

    def get_data(self):
        return self._data

metrics = Metrics()
history = model.fit(X_train, y_train, epochs=100, validation_data=(X_val, y_val), callbacks=[metrics])
  • Need to do recall_score(y_val, y_predict, average=None) and precision_score(y_val, y_predict, average=None) here. The default is average=binary and you'll get an error because this is multi-class classification. – Yuxuan Chen Mar 1 at 1:03

This thread is a little stale, but just in case it'll help someone landing here. If you are willing to upgrade to Keras v2.1.6, there has been a lot of work on getting stateful metrics to work though there seems to be more work that is being done (https://github.com/keras-team/keras/pull/9446).

Anyway, I found the best way to integrate precision/recall was using the custom metric that subclasses Layer, shown by example in BinaryTruePositives.

For recall, this would look like:

class Recall(keras.layers.Layer):
    """Stateful Metric to count the total recall over all batches.

    Assumes predictions and targets of shape `(samples, 1)`.

    # Arguments
        name: String, name for the metric.

    def __init__(self, name='recall', **kwargs):
        super(Recall, self).__init__(name=name, **kwargs)
        self.stateful = True

        self.recall = K.variable(value=0.0, dtype='float32')
        self.true_positives = K.variable(value=0, dtype='int32')
        self.false_negatives = K.variable(value=0, dtype='int32')
    def reset_states(self):
        K.set_value(self.recall, 0.0)
        K.set_value(self.true_positives, 0)
        K.set_value(self.false_negatives, 0)

    def __call__(self, y_true, y_pred):
        """Computes the number of true positives in a batch.

        # Arguments
            y_true: Tensor, batch_wise labels
            y_pred: Tensor, batch_wise predictions

        # Returns
            The total number of true positives seen this epoch at the
                completion of the batch.
        y_true = K.cast(y_true, 'int32')
        y_pred = K.cast(K.round(y_pred), 'int32')

        # False negative calculations
        y_true = K.cast(y_true, 'int32')
        y_pred = K.cast(K.round(y_pred), 'int32')
        false_neg = K.cast(K.sum(K.cast(K.greater(y_pred, y_true), 'int32')), 'int32')
        current_false_neg = self.false_negatives * 1
                        inputs=[y_true, y_pred])
        # True positive  calculations
        correct_preds = K.cast(K.equal(y_pred, y_true), 'int32')
        true_pos = K.cast(K.sum(correct_preds * y_true), 'int32')
        current_true_pos = self.true_positives * 1
                        inputs=[y_true, y_pred])
        # Combine
        recall = (K.cast(self.true_positives, 'float32') / (K.cast(self.true_positives, 'float32') + K.cast(self.false_negatives, 'float32') + K.cast(K.epsilon(), 'float32')))
                        inputs=[y_true, y_pred])

        return recall   

Use Scikit Learn framework for this.

from sklearn.metrics import classification_report

history = model.fit(x_train, y_train, batch_size=32, epochs=10, verbose=1, validation_data=(x_test, y_test), shuffle=True)
pred = model.predict(x_test, batch_size=32, verbose=1)
predicted = np.argmax(pred, axis=1)
report = classification_report(np.argmax(y_test, axis=1), predicted)

This blog is very useful.

  • 1
    This is something you do at the end. But to get these values for every epoch and see how they evolve? – yannis Apr 28 '18 at 8:21

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