# Scipy/Numpy/scikits - calculating precision/recall scores based on two arrays

• I fit a Logistic Regression Model and train the model based on training dataset using the following
``````import scikits as sklearn
from sklearn.linear_model import LogisticRegression
lr = LogisticRegression(C=0.1, penalty='l1')
model = lr.fit(training[:,0:-1], training[:,-1)
``````
• I have a cross validation dataset which contains a labels associated in input matrix and can be accessed as

cv[:,-1]

• I run my cross validation dataset against the trained model which returns me the list of 0s and 1s based on prediction

cv_predict = model.predict(cv[:,0:-1])

Question

I want to calculate the precision and recall scores based on acutal labels and predicted labels. Is there a standard method to do it using numpy/scipy/scikits?

Thank you

-

Yes there are, see the documentation: http://scikit-learn.org/stable/modules/classes.html#classification-metrics

You should also have a look at the `sklearn.metrics.classification_report` utility:

``````>>> from sklearn.metrics import classification_report
>>> from sklearn.linear_model import SGDClassifier

>>> n_samples, n_features = digits.data.shape
>>> n_split = n_samples / 2

>>> clf = SGDClassifier().fit(digits.data[:n_split], digits.target[:n_split])

>>> predictions = clf.predict(digits.data[n_split:])
>>> expected = digits.target[n_split:]

>>> print classification_report(expected, predictions)
precision    recall  f1-score   support

0       0.90      0.98      0.93        88
1       0.81      0.69      0.75        91
2       0.94      0.98      0.96        86
3       0.94      0.85      0.89        91
4       0.90      0.93      0.91        92
5       0.92      0.92      0.92        91
6       0.92      0.97      0.94        91
7       1.00      0.85      0.92        89
8       0.71      0.89      0.79        88
9       0.89      0.83      0.86        92

avg / total       0.89      0.89      0.89       899
``````
-
this is awesome, thank you @ogrisel –  daydreamer Feb 1 '12 at 13:43