2.2.1. Statistical learning: the setting and the estimator object in the scikit-learn¶
2.2.1.1. Datasets¶
The scikit-learn deals with learning information from one or more datasets that are represented as 2D arrays. They can be understood as a list of multi-dimensional observations. We say that the first axis of these arrays is the samples axis, while the second is the features axis.
A simple example shipped with the scikit: iris dataset
>>> from sklearn import datasets
>>> iris = datasets.load_iris()
>>> data = iris.data
>>> data.shape
(150, 4)
It is made of 150 observations of irises, each described by 4 features: their sepal and petal length and width, as detailed in iris.DESCR.
When the data is not intially in the (n_samples, n_features) shape, it needs to be preprocessed to be used by the scikit.
An example of reshaping data: the digits dataset
The digits dataset is made of 1797 8x8 images of hand-written digits
>>> digits = datasets.load_digits()
>>> digits.images.shape
(1797, 8, 8)
>>> import pylab as pl
>>> pl.imshow(digits.images[-1], cmap=pl.cm.gray_r)
<matplotlib.image.AxesImage object at ...>
To use this dataset with the scikit, we transform each 8x8 image in a feature vector of length 64
>>> data = digits.images.reshape((digits.images.shape[0], -1))
2.2.1.2. Estimators objects¶
Fitting data: The core object of the scikit-learn is the estimator object. All estimator objects expose a fit method, that takes a dataset (2D array):
>>> estimator.fit(data)
Estimator parameters: All the parameters of an estimator can be set when it is instanciated, or by modifying the corresponding attribute:
>>> estimator = Estimator(param1=1, param2=2)
>>> estimator.param1
1
Estimated parameters: When data is fitted with an estimator, parameters are estimated from the data at hand. All the estimated parameters are attributes of the estimator object ending by an underscore:
>>> estimator.estimated_param_