I have a dataset,
data, and a labeled array,
target, with which I build in scikit-learn a supervised model using the k-Nearest Neighbors algorithm.
neigh = KNeighborsClassifier() neigh.fit(data, target)
I am now able to classify my learning set using this very model. To get the classification score :
Now my problem is that this score depends on the type of the
- If it is a python list, that is, created using
list()and filled in with
target.append(), the score method returns 0.68.
- If it is a numpy array, created using
target = np.empty(shape=(length,1), dtype="S36")(it contains only 36-character strings), and filled in with
target[k] = value, the score method returns 0.008.
To make sure whether results were really different or not, I created text files that list the results of
for k in data: neigh.predict(k)
in each case. The results were the same.
What can explain the score difference ?