sklearn.datasets
.fetch_openml¶
-
sklearn.datasets.
fetch_openml
(name=None, version=’active’, data_id=None, data_home=None, target_column=’default-target’, cache=True, return_X_y=False)[source]¶ Fetch dataset from openml by name or dataset id.
Datasets are uniquely identified by either an integer ID or by a combination of name and version (i.e. there might be multiple versions of the ‘iris’ dataset). Please give either name or data_id (not both). In case a name is given, a version can also be provided.
Read more in the User Guide.
Note
EXPERIMENTAL
The API is experimental (particularly the return value structure), and might have small backward-incompatible changes in future releases.
Parameters: - name : str or None
String identifier of the dataset. Note that OpenML can have multiple datasets with the same name.
- version : integer or ‘active’, default=’active’
Version of the dataset. Can only be provided if also
name
is given. If ‘active’ the oldest version that’s still active is used. Since there may be more than one active version of a dataset, and those versions may fundamentally be different from one another, setting an exact version is highly recommended.- data_id : int or None
OpenML ID of the dataset. The most specific way of retrieving a dataset. If data_id is not given, name (and potential version) are used to obtain a dataset.
- data_home : string or None, default None
Specify another download and cache folder for the data sets. By default all scikit-learn data is stored in ‘~/scikit_learn_data’ subfolders.
- target_column : string, list or None, default ‘default-target’
Specify the column name in the data to use as target. If ‘default-target’, the standard target column a stored on the server is used. If
None
, all columns are returned as data and the target isNone
. If list (of strings), all columns with these names are returned as multi-target (Note: not all scikit-learn classifiers can handle all types of multi-output combinations)- cache : boolean, default=True
Whether to cache downloaded datasets using joblib.
- return_X_y : boolean, default=False.
If True, returns
(data, target)
instead of a Bunch object. See below for more information about thedata
and target objects.
Returns: - data : Bunch
Dictionary-like object, with attributes:
- data : np.array or scipy.sparse.csr_matrix of floats
The feature matrix. Categorical features are encoded as ordinals.
- target : np.array
The regression target or classification labels, if applicable. Dtype is float if numeric, and object if categorical.
- DESCR : str
The full description of the dataset
- feature_names : list
The names of the dataset columns
- categories : dict
Maps each categorical feature name to a list of values, such that the value encoded as i is ith in the list.
- details : dict
More metadata from OpenML
- (data, target) : tuple if
return_X_y
is True Note
EXPERIMENTAL
This interface is experimental and subsequent releases may change attributes without notice (although there should only be minor changes to
data
andtarget
).Missing values in the ‘data’ are represented as NaN’s. Missing values in ‘target’ are represented as NaN’s (numerical target) or None (categorical target)