gemseo.mlearning.core.algos.unsupervised module#

This module contains the base class for the unsupervised machine learning algorithms.

The unsupervised module implements the concept of unsupervised machine learning models, where the data has no notion of input or output.

This concept is implemented through the BaseMLUnsupervisedAlgo class, which inherits from the BaseMLAlgo class.

class BaseMLUnsupervisedAlgo(data, settings_model=None, **settings)[source]#

Bases: BaseMLAlgo

Unsupervised machine learning algorithm.

Inheriting classes shall overload the BaseMLUnsupervisedAlgo._fit() method.

Parameters:
  • data (Dataset) -- The learning dataset.

  • settings_model (BaseMLAlgoSettings | None) -- The machine learning algorithm settings as a Pydantic model. If None, use **settings.

  • **settings (Any) -- The machine learning algorithm settings. These arguments are ignored when settings_model is not None.

Raises:

ValueError -- When both the variable and the group it belongs to have a transformer.

Settings#

alias of BaseMLUnsupervisedAlgoSettings

DataFormatters: ClassVar[type[BaseDataFormatters]]#

The data formatters for the learning and prediction methods.

SHORT_ALGO_NAME: ClassVar[str] = 'BaseMLUnsupervisedAlgo'#

The short name of the machine learning algorithm, often an acronym.

Typically used for composite names, e.g. f"{algo.SHORT_ALGO_NAME}_{dataset.name}" or f"{algo.SHORT_ALGO_NAME}_{discipline.name}".

algo: Any#

The interfaced machine learning algorithm.

input_names: list[str]#

The names of the variables.

learning_set: Dataset#

The learning dataset.

resampling_results: dict[str, tuple[BaseResampler, list[BaseMLAlgo], list[ndarray] | ndarray]]#

The resampler class names bound to the resampling results.

A resampling result is formatted as (resampler, ml_algos, predictions) where resampler is a BaseResampler, ml_algos is the list of the associated machine learning algorithms built during the resampling stage and predictions are the predictions obtained with the latter.

resampling_results stores only one resampling result per resampler type (e.g., "CrossValidation", "LeaveOneOut" and "Boostrap").

transformer: dict[str, BaseTransformer]#

The strategies to transform the variables, if any.

The values are instances of BaseTransformer while the keys are the names of either the variables or the groups of variables, e.g. "inputs" or "outputs" in the case of the regression algorithms. If a group is specified, the BaseTransformer will be applied to all the variables of this group.