autoprognosis.plugins.prediction.classifiers.plugin_linear_svm module

class LinearSVMPlugin(penalty: int = 1, calibration: int = 0, model: Optional[Any] = None, random_state: int = 0, **kwargs: Any)

Bases: autoprognosis.plugins.prediction.classifiers.base.ClassifierPlugin

Classification plugin based on the Linear Support Vector Classification algorithm.

Method:

The plugin is based on LinearSVC, an implementation of Support Vector Classification for the case of a linear kernel.

Parameters
  • penalty – int Specifies the norm used in the penalization. 0: l1, 1: l2

  • calibration – int Enable/disable calibration. 0: disabled, 1 : sigmoid, 2: isotonic.

  • random_state – int, default 0 Random seed

Example

>>> from autoprognosis.plugins.prediction import Predictions
>>> plugin = Predictions(category="classifiers").get("linear_svm")
>>> from sklearn.datasets import load_iris
>>> X, y = load_iris(return_X_y=True)
>>> plugin.fit_predict(X, y)
change_output(output: str) None
explain(X: pandas.core.frame.DataFrame, *args: Any, **kwargs: Any) pandas.core.frame.DataFrame
fit(X: pandas.core.frame.DataFrame, *args: Any, **kwargs: Any) autoprognosis.plugins.core.base_plugin.Plugin

Train the plugin

Parameters

X – pd.DataFrame

fit_predict(X: pandas.core.frame.DataFrame, *args: Any, **kwargs: Any) pandas.core.frame.DataFrame

Fit the model and predict the training data. Used by predictors.

fit_transform(X: pandas.core.frame.DataFrame, *args: Any, **kwargs: Any) pandas.core.frame.DataFrame

Fit the model and transform the training data. Used by imputers and preprocessors.

classmethod fqdn() str

The fully-qualified name of the plugin: type->subtype->name

get_args() dict
static hyperparameter_space(*args: Any, **kwargs: Any) List[autoprognosis.plugins.core.params.Params]

The hyperparameter search domain, used for tuning.

classmethod hyperparameter_space_fqdn(*args: Any, **kwargs: Any) List[autoprognosis.plugins.core.params.Params]

The hyperparameter domain using they fully-qualified name.

is_fitted() bool

Check if the model was trained

classmethod load(buff: bytes) autoprognosis.plugins.prediction.classifiers.plugin_linear_svm.LinearSVMPlugin

Load the plugin from bytes

static name() str

The name of the plugin, e.g.: xgboost

penalties = ['l1', 'l2']
predict(X: pandas.core.frame.DataFrame, *args: Any, **kwargs: Any) pandas.core.frame.DataFrame

Run predictions for the input. Used by predictors.

Parameters

X – pd.DataFrame

predict_proba(X: pandas.core.frame.DataFrame, *args: Any, **kwargs: Any) pandas.core.frame.DataFrame
classmethod sample_hyperparameters(trial: optuna.trial.Trial, *args: Any, **kwargs: Any) Dict[str, Any]

Sample hyperparameters for Optuna.

classmethod sample_hyperparameters_fqdn(trial: optuna.trial.Trial, *args: Any, **kwargs: Any) Dict[str, Any]

Sample hyperparameters using they fully-qualified name.

classmethod sample_hyperparameters_np(random_state: int = 0, *args: Any, **kwargs: Any) Dict[str, Any]

Sample hyperparameters as a dict.

save() bytes

Save the plugin to bytes

score(X: pandas.core.frame.DataFrame, y: pandas.core.frame.DataFrame, metric: str = 'aucroc') float
static subtype() str

The type of the plugin, e.g.: classifier

transform(X: pandas.core.frame.DataFrame) pandas.core.frame.DataFrame

Transform the input. Used by imputers and preprocessors.

Parameters

X – pd.DataFrame

static type() str

The type of the plugin, e.g.: prediction

plugin

alias of autoprognosis.plugins.prediction.classifiers.plugin_linear_svm.LinearSVMPlugin