# Scikit learn Python Interpreting SVC probabilities

I made a SVC but I am confused in interpreting the results for the probability. Lets say there are 3 categories cat, dog, and fish and I want to know the probability which it can be of each one so I used `.predict` to find the prediction and `.predict_proba` but it does not come out correct for small samples.

``````from sklearn import svm
X = [[1,2,3], [2,3,4], [1,1,3], [2,3,5], [3,4,6], [2,3,4],[1,2,3]]
y = ['cat', 'dog', 'cat','dog','fish','dog','cat']
clf =svm.SVC(probability=True)
clf.fit(X, y)
a=clf.decision_function([3,4,6])
b=clf.predict_proba([3,4,6])
c=clf.score(X, y)

print clf.classes_
print 'accuracy', c
print 'Fish prediction'
print clf.predict([3,4,6])
print 'decision function', a
print  'predict', b
``````

If I predict something with low amount of samples like fish it is accurate but can someone explain why the prediction probability is so low: 0.027. (I know it is using Platt Scaling but why was dog not selected at a probability of 0.71) Is there way to obtain the probability which the SVM predicts that the results are fish?

``````['cat' 'dog' 'fish']
accuracy 1.0
Fish prediction
['fish']
decision function [[-0.25639624 -0.85413901 -0.25966687]]
predict [[ 0.26194797  0.71056399  0.02748803]]
``````

Lets say I want to predict cat:

``````#predict cat
d=clf.decision_function([1,2,3])
e=clf.predict_proba([1,2,3])
print 'Cat prediction'
print clf.predict([1,2,3])
print 'decision function', d
print  'predict', e
``````

It printed out the correct probability of 0.61

``````Cat prediction
['cat']
decision function [[ 0.99964652  0.99999999  0.54610562]]
predict [[ 0.61104793  0.19764548  0.19130659]]
``````

Also I think I am using the `score` wrong since it is tested against itself and yields the value of 1 meaning that it is 100% accurate. How do I correctly use `score`?

-
In the multiclass case, what `SVC.predict_proba` does is actually an extended version of Platt scaling from this paper. `clf.probA_` and `clf.probB_` contain the relevant parameters. I'm sorry to leave it at this, but Platt-scaled SVMs are just about the hardest to interpret probability models out there (and the slowest to train). –  larsmans Jan 27 at 10:14
@larsmans Is there a better way to return a probability this case? –  user3084006 Jan 27 at 10:21
Use `LogisticRegression`? If you really need a non-linear model, you can look at the module `sklearn.kernel_approximation`; see also this blog post by @AndreasMueller. –  larsmans Jan 27 at 10:27
@larsmans isn't that the same as switching to a linear kernel? The first thing I tried was `linearSVC``\ but it gave me the wrong predictions. `clf.predict([3,4,6])` gave me dog instead of fish. The reason I am trying this is to see how it handles uncommon data points. I know my data set is also not large enough for SVM –  user3084006 Jan 27 at 11:00
`LinearSVC` and LogReg are differently parametrized than `SVC`. You haven't optimized the parameter settings, you haven't normalized the data, and you're testing on a single sample, so you really can't draw the conclusion that it gives wrong predictions. –  larsmans Jan 27 at 12:01