# How to do gaussian/polynomial regression with scikit-learn?

Does scikit-learn provide facility to perform regression using a gaussian or polynomial kernel? I looked at the APIs and I don't see any. Has anyone built a package on top of scikit-learn that does this?

Theory

Polynomial regression is a special case of linear regression. With the main idea of how do you select your features. Looking at the multivariate regression with 2 variables: `x1` and `x2`. Linear regression will look like this: `y = a1 * x1 + a2 * x2.`

Now you want to have a polynomial regression (let's make 2 degree polynomial). We will create a few additional features: `x1*x2`, `x1^2` and `x2^2`. So we will get your 'linear regression':

``````y = a1 * x1 + a2 * x2 + a3 * x1*x2 + a4 * x1^2 + a5 * x2^2
``````

This nicely shows an important concept curse of dimensionality, because the number of new features grows much faster than linearly with the growth of degree of polynomial. You can take a look about this concept here.

Practice with scikit-learn

You do not need to do all this in scikit. Polynomial regression is already available there (in 0.15 version. Check how to update it here).

``````from sklearn.preprocessing import PolynomialFeatures
from sklearn import linear_model

X = [[0.44, 0.68], [0.99, 0.23]]
vector = [109.85, 155.72]
predict= [0.49, 0.18]

poly = PolynomialFeatures(degree=2)
X_ = poly.fit_transform(X)
predict_ = poly.fit_transform(predict)

clf = linear_model.LinearRegression()
clf.fit(X_, vector)
print clf.predict(predict_)
``````
• sklearn's Pipeline makes this even easier: scikit-learn.org/0.17/auto_examples/model_selection/…
– amos
Sep 30, 2016 at 15:10
• @Salvador Dali. Sorry, what is "vector" exactly? Nov 7, 2016 at 0:07
• @GianlucaJohnMassimiani, vector = y_training and predict = X_test.
– user4322543
Nov 20, 2016 at 20:41
• I am trying to get the code for `PolynomialFeatures` for `d>2`, do you have it? Aug 26, 2017 at 16:02

Either you use Support Vector Regression `sklearn.svm.SVR` and set the appropritate `kernel` (see here).

Or you install the latest master version of sklearn and use the recently added `sklearn.preprocessing.PolynomialFeatures` (see here) and then OLS or `Ridge` on top of that.