I have been running this LSTM tutorial on the wikigold.conll NER data set

training_data contains a list of tuples of sequences and tags, for example:

training_data = [
    ("They also have a song called \" wake up \"".split(), ["O", "O", "O", "O", "O", "O", "I-MISC", "I-MISC", "I-MISC", "I-MISC"]),
    ("Major General John C. Scheidt Jr.".split(), ["O", "O", "I-PER", "I-PER", "I-PER"])

And I wrote down this function

def predict(indices):
    """Gets a list of indices of training_data, and returns a list of predicted lists of tags"""
    for index in indicies:
        inputs = prepare_sequence(training_data[index][0], word_to_ix)
        tag_scores = model(inputs)
        values, target = torch.max(tag_scores, 1)
        yield target

This way I can get the predicted labels for specific indices in the training data.

However, how do I evaluate the accuracy score across all training data.

Accuracy being, the amount of words correctly classified across all sentences divided by the word count.

This is what I came up with, which is extremely slow and ugly:

y_pred = list(predict([s for s, t in training_data]))
y_true = [t for s, t in training_data]
for i in range(len(training_data)):
    n = len(y_true[i])
    #super ugly and ineffiicient
    s+=(sum(sum(list(y_true[i].view(-1, n) == y_pred[i].view(-1, n).data))))

print ('Training accuracy:{a}'.format(a=float(s)/c))

How can this be done efficiently in pytorch ?

P.S: I've been trying to use sklearn's accuracy_score unsuccessfully


I would use numpy in order to not iterate the list in pure python.

The results are the same, but it runs much faster

def accuracy_score(y_true, y_pred):
    y_pred = np.concatenate(tuple(y_pred))
    y_true = np.concatenate(tuple([[t for t in y] for y in y_true])).reshape(y_pred.shape)
    return (y_true == y_pred).sum() / float(len(y_true))

And this is how to use it:

#original code:
y_pred = list(predict([s for s, t in training_data]))
y_true = [t for s, t in training_data]
#numpy accuracy score
print(accuracy_score(y_true, y_pred))

You may use sklearn's accuracy_score like this:

values, target = torch.max(tag_scores, -1)
accuracy = accuracy_score(train_y, target)
print("\nTraining accuracy is %d%%" % (accuracy*100))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.