FromFileHIVECOTE¶
- class tsml_eval.estimators.classification.hybrid.FromFileHIVECOTE(classifiers, alpha=4, tune_alpha=False, new_weights=None, acc_filter=None, overwrite_y=False, skip_y_check=False, skip_shape_check=False, random_state=None)[source]¶
HIVE-COTE from file.
Builds the Hierarchical Vote Collective of Transformation-based Ensembles (HIVE-COTE) from results files. For example, HC2 is n ensemble of the STC, DrCIF, Arsenal and TDE classifiers from different feature representations using the CAWPE structure as described in [1].
- Parameters:
- classifierslist
The paths to results files used. i.e. Arsenal, DrCIF, STC and TDE files for HC2.
- alphaint, default=4
The exponent to extenuate differences in classifiers and weighting with the accuracy estimate.
- tune_alphabool, default=False
Tests alpha [1..10] and uses the best value.
- new_weightslist, default=None
The list of weights to use. Skips finding of weights if not None.
- acc_filter(str, float) tuple, default=None
Removes the worst component based or on accuracies on training data if first item is “train” or test data if first item is “test”. Be warned that using the test data in this way is cheating, and should only be used for exploration. The second item is the threshold for the filter, e.g. 0.5 will remove all components with accuracies less than 50% of the best component. Will always keep the most accurate component.
- overwrite_ybool, default=False
If True, the labels in the loaded files will overwrite the labels passed in the fit method.
- skip_y_checkbool, default=False
If True, the labels in the loaded files will not be checked against the labels passed in the fit method.
- skip_shape_checkbool, default=False
If True, the shape of the loaded files (n_cases and n_classes) will not be checked against the shape of the data passed in the fit method. This can cause breakage, so use with caution.
- random_stateint or None, default=None
Seed for random number generation.
- Attributes:
- weights_list
The weight for Arsenal, DrCIF, STC and TDE probabilities.
Methods
clone([random_state])Obtain a clone of the object with the same hyperparameters.
fit(X, y)Fit time series classifier to training data.
fit_predict(X, y, **kwargs)Fits the classifier and predicts class labels for X.
fit_predict_proba(X, y, **kwargs)Fits the classifier and predicts class label probabilities for X.
get_class_tag(tag_name[, raise_error, ...])Get tag value from estimator class (only class tags).
Get class tags from estimator class and all its parent classes.
get_fitted_params([deep])Get fitted parameters.
Sklearn metadata routing.
get_params([deep])Get parameters for this estimator.
get_tag(tag_name[, raise_error, ...])Get tag value from estimator class.
get_tags()Get tags from estimator.
get_test_params([parameter_set])Return testing parameter settings for the estimator.
predict(X)Predicts class labels for time series in X.
Predicts class label probabilities for time series in X.
reset([keep])Reset the object to a clean post-init state.
score(X, y[, metric, use_proba, metric_params])Scores predicted labels against ground truth labels on X.
set_params(**params)Set the parameters of this estimator.
set_tags(**tag_dict)Set dynamic tags to given values.
References
[1]Middlehurst, Matthew, James Large, Michael Flynn, Jason Lines, Aaron Bostrom, and Anthony Bagnall. “HIVE-COTE 2.0: a new meta ensemble for time series classification.” Machine Learning (2021).
- classmethod get_test_params(parameter_set='default')[source]¶
Return testing parameter settings for the estimator.
- Parameters:
- parameter_setstr, default=”default”
Name of the set of test parameters to return, for use in tests. If no special parameters are defined for a value, will return “default” set. For classifiers, a “default” set of parameters should be provided for general testing, and a “results_comparison” set for comparing against previously recorded results if the general set does not produce suitable probabilities to compare against.
- Returns:
- paramsdict or list of dict, default={}
Parameters to create testing instances of the class. Each dict are parameters to construct an “interesting” test instance, i.e., MyClass(**params) or MyClass(**params[i]) creates a valid test instance. create_test_instance uses the first (or only) dictionary in params.
- clone(random_state=None)[source]¶
Obtain a clone of the object with the same hyperparameters.
A clone is a different object without shared references, in post-init state. This function is equivalent to returning
sklearn.cloneof self. Equal in value totype(self)(**self.get_params(deep=False)).- Parameters:
- random_stateint, RandomState instance, or None, default=None
Sets the random state of the clone. If None, the random state is not set. If int, random_state is the seed used by the random number generator. If RandomState instance, random_state is the random number generator.
- Returns:
- estimatorobject
Instance of
type(self), clone of self (see above)
- fit(X, y) BaseCollectionEstimator[source]¶
Fit time series classifier to training data.
- Parameters:
- Xnp.ndarray or list
Input data, any number of channels, equal length series of shape
( n_cases, n_channels, n_timepoints)or 2D np.array (univariate, equal length series) of shape(n_cases, n_timepoints)or list of numpy arrays (any number of channels, unequal length series) of shape[n_cases], 2D np.array(n_channels, n_timepoints_i), wheren_timepoints_iis length of seriesi. Other types are allowed and converted into one of the above.Different estimators have different capabilities to handle different types of input. If
self.get_tag("capability:multivariate")is False, they cannot handle multivariate series, so eithern_channels == 1is true or X is 2D of shape(n_cases, n_timepoints). Ifself.get_tag( "capability:unequal_length")is False, they cannot handle unequal length input. In both situations, aValueErroris raised if X has a characteristic that the estimator does not have the capability for is passed.- ynp.ndarray
1D np.array of float or str, of shape
(n_cases)- class labels (ground truth) for fitting indices corresponding to instance indices in X.
- Returns:
- selfBaseClassifier
Reference to self.
Notes
Changes state by creating a fitted model that updates attributes ending in “_” and sets is_fitted flag to True.
- fit_predict(X, y, **kwargs) ndarray[source]¶
Fits the classifier and predicts class labels for X.
fit_predict produces prediction estimates using just the train data. By default, this is through 10x cross validation, although some estimators may utilise specialist techniques such as out-of-bag estimates or leave-one-out cross-validation.
Classifiers which override _fit_predict will have the
capability:train_estimatetag set to True.Generally, this will not be the same as fitting on the whole train data then making train predictions. To do this, you should call fit(X,y).predict(X)
- Parameters:
- Xnp.ndarray or list
Input data, any number of channels, equal length series of shape
( n_cases, n_channels, n_timepoints)or 2D np.array (univariate, equal length series) of shape(n_cases, n_timepoints)or list of numpy arrays (any number of channels, unequal length series) of shape[n_cases], 2D np.array(n_channels, n_timepoints_i), wheren_timepoints_iis length of seriesi. other types are allowed and converted into one of the above.Different estimators have different capabilities to handle different types of input. If
self.get_tag("capability:multivariate")is False, they cannot handle multivariate series, so eithern_channels == 1is true or X is 2D of shape(n_cases, n_timepoints). Ifself.get_tag( "capability:unequal_length")is False, they cannot handle unequal length input. In both situations, aValueErroris raised if X has a characteristic that the estimator does not have the capability for is passed.- ynp.ndarray
1D np.array of float or str, of shape
(n_cases)- class labels (ground truth) for fitting indices corresponding to instance indices in X.- kwargsdict
key word arguments to configure the default cross validation if the base class default fit_predict is used (i.e. if function
_fit_predictis not overridden. If_fit_predictis overridden, kwargs may not function as expected. If_fit_predictis not overridden, valid input iscv_sizeinteger, which is the number of cross validation folds to use to estimate train data. Ifcv_sizeis not passed, the default is 10. Ifcv_sizeis greater than the minimum number of samples in any class, it is set to this minimum.
- Returns:
- predictionsnp.ndarray
shape
[n_cases]- predicted class labels indices correspond to instance indices in
- fit_predict_proba(X, y, **kwargs) ndarray[source]¶
Fits the classifier and predicts class label probabilities for X.
fit_predict_proba produces probability estimates using just the train data. By default, this is through 10x cross validation, although some estimators may utilise specialist techniques such as out-of-bag estimates or leave-one-out cross-validation.
Classifiers which override _fit_predict_proba will have the
capability:train_estimatetag set to True.Generally, this will not be the same as fitting on the whole train data then making train predictions. To do this, you should call fit(X,y).predict_proba(X)
- Parameters:
- Xnp.ndarray or list
Input data, any number of channels, equal length series of shape
( n_cases, n_channels, n_timepoints)or 2D np.array (univariate, equal length series) of shape(n_cases, n_timepoints)or list of numpy arrays (any number of channels, unequal length series) of shape[n_cases], 2D np.array(n_channels, n_timepoints_i), wheren_timepoints_iis length of seriesi. other types are allowed and converted into one of the above.Different estimators have different capabilities to handle different types of input. If
self.get_tag("capability:multivariate")is False, they cannot handle multivariate series, so eithern_channels == 1is true or X is 2D of shape(n_cases, n_timepoints). Ifself.get_tag( "capability:unequal_length")is False, they cannot handle unequal length input. In both situations, aValueErroris raised if X has a characteristic that the estimator does not have the capability for is passed.- ynp.ndarray
1D np.array of float or str, of shape
(n_cases)- class labels (ground truth) for fitting indices corresponding to instance indices in X.- kwargsdict
key word arguments to configure the default cross validation if the base class default fit_predict is used (i.e. if function
_fit_predictis not overridden. If_fit_predictis overridden, kwargs may not function as expected. If_fit_predictis not overridden, valid input iscv_sizeinteger, which is the number of cross validation folds to use to estimate train data. Ifcv_sizeis not passed, the default is 10. Ifcv_sizeis greater than the minimum number of samples in any class, it is set to this minimum.
- Returns:
- probabilitiesnp.ndarray
2D array of shape
(n_cases, n_classes)- predicted class probabilities First dimension indices correspond to instance indices in X, second dimension indices correspond to class labels, (i, j)-th entry is estimated probability that i-th instance is of class j
- classmethod get_class_tag(tag_name, raise_error=True, tag_value_default=None)[source]¶
Get tag value from estimator class (only class tags).
- Parameters:
- tag_namestr
Name of tag value.
- raise_errorbool, default=True
Whether a ValueError is raised when the tag is not found.
- tag_value_defaultany type, default=None
Default/fallback value if tag is not found and error is not raised.
- Returns:
- tag_value
Value of the
tag_nametag in cls. If not found, returns an error ifraise_erroris True, otherwise it returnstag_value_default.
- Raises:
- ValueError
if
raise_erroris True andtag_nameis not inself.get_tags().keys()
Examples
>>> from aeon.classification import DummyClassifier >>> DummyClassifier.get_class_tag("capability:multivariate") True
- classmethod get_class_tags()[source]¶
Get class tags from estimator class and all its parent classes.
- Returns:
- collected_tagsdict
Dictionary of tag name and tag value pairs. Collected from
_tagsclass attribute via nested inheritance. These are not overridden by dynamic tags set byset_tagsor class__init__calls.
- get_fitted_params(deep=True)[source]¶
Get fitted parameters.
- State required:
Requires state to be “fitted”.
- Parameters:
- deepbool, default=True
If True, will return the fitted parameters for this estimator and contained subobjects that are estimators.
- Returns:
- fitted_paramsdict
Fitted parameter names mapped to their values.
- get_params(deep=True)[source]¶
Get parameters for this estimator.
- Parameters:
- deepbool, default=True
If True, will return the parameters for this estimator and contained subobjects that are estimators.
- Returns:
- paramsdict
Parameter names mapped to their values.
- get_tag(tag_name, raise_error=True, tag_value_default=None)[source]¶
Get tag value from estimator class.
Includes dynamic and overridden tags.
- Parameters:
- tag_namestr
Name of tag to be retrieved.
- raise_errorbool, default=True
Whether a ValueError is raised when the tag is not found.
- tag_value_defaultany type, default=None
Default/fallback value if tag is not found and error is not raised.
- Returns:
- tag_value
Value of the
tag_nametag in self. If not found, returns an error ifraise_erroris True, otherwise it returnstag_value_default.
- Raises:
- ValueError
if raise_error is
Trueandtag_nameis not inself.get_tags().keys()
Examples
>>> from aeon.classification import DummyClassifier >>> d = DummyClassifier() >>> d.get_tag("capability:multivariate") True
- get_tags()[source]¶
Get tags from estimator.
Includes dynamic and overridden tags.
- Returns:
- collected_tagsdict
Dictionary of tag name and tag value pairs. Collected from
_tagsclass attribute via nested inheritance and then any overridden and new tags from__init__orset_tags.
- predict(X) ndarray[source]¶
Predicts class labels for time series in X.
- Parameters:
- Xnp.ndarray or list
Input data, any number of channels, equal length series of shape
( n_cases, n_channels, n_timepoints)or 2D np.array (univariate, equal length series) of shape(n_cases, n_timepoints)or list of numpy arrays (any number of channels, unequal length series) of shape[n_cases], 2D np.array(n_channels, n_timepoints_i), wheren_timepoints_iis length of seriesiother types are allowed and converted into one of the above.Different estimators have different capabilities to handle different types of input. If
self.get_tag("capability:multivariate")is False, they cannot handle multivariate series, so eithern_channels == 1is true or X is 2D of shape(n_cases, n_timepoints). Ifself.get_tag( "capability:unequal_length")is False, they cannot handle unequal length input. In both situations, aValueErroris raised if X has a characteristic that the estimator does not have the capability for is passed.
- Returns:
- predictionsnp.ndarray
1D np.array of float, of shape (n_cases) - predicted class labels indices correspond to instance indices in X
- predict_proba(X) ndarray[source]¶
Predicts class label probabilities for time series in X.
- Parameters:
- Xnp.ndarray or list
Input data, any number of channels, equal length series of shape
( n_cases, n_channels, n_timepoints)or 2D np.array (univariate, equal length series) of shape(n_cases, n_timepoints)or list of numpy arrays (any number of channels, unequal length series) of shape[n_cases], 2D np.array(n_channels, n_timepoints_i), wheren_timepoints_iis length of seriesi. other types are allowed and converted into one of the above.Different estimators have different capabilities to handle different types of input. If
self.get_tag("capability:multivariate")is False, they cannot handle multivariate series, so eithern_channels == 1is true or X is 2D of shape(n_cases, n_timepoints). Ifself.get_tag( "capability:unequal_length")is False, they cannot handle unequal length input. In both situations, aValueErroris raised if X has a characteristic that the estimator does not have the capability for is passed.
- Returns:
- probabilitiesnp.ndarray
2D array of shape
(n_cases, n_classes)- predicted class probabilities First dimension indices correspond to instance indices in X, second dimension indices correspond to class labels, (i, j)-th entry is estimated probability that i-th instance is of class j
- reset(keep=None)[source]¶
Reset the object to a clean post-init state.
After a
self.reset()call, self is equal or similar in value totype(self)(**self.get_params(deep=False)), assuming no other attributes were kept usingkeep.- Detailed behaviour:
- removes any object attributes, except:
hyper-parameters (arguments of
__init__) object attributes containing double-underscores, i.e., the string “__”
runs
__init__with current values of hyperparameters (result ofget_params)- Not affected by the reset are:
object attributes containing double-underscores class and object methods, class attributes any attributes specified in the
keepargument
- Parameters:
- keepNone, str, or list of str, default=None
If None, all attributes are removed except hyperparameters. If str, only the attribute with this name is kept. If list of str, only the attributes with these names are kept.
- Returns:
- selfobject
Reference to self.
- score(X, y, metric='accuracy', use_proba=False, metric_params=None) float[source]¶
Scores predicted labels against ground truth labels on X.
- Parameters:
- Xnp.ndarray or list
Input data, any number of channels, equal length series of shape
( n_cases, n_channels, n_timepoints)or 2D np.array (univariate, equal length series) of shape(n_cases, n_timepoints)or list of numpy arrays (any number of channels, unequal length series) of shape[n_cases], 2D np.array(n_channels, n_timepoints_i), wheren_timepoints_iis length of seriesi. other types are allowed and converted into one of the above.Different estimators have different capabilities to handle different types of input. If
self.get_tag("capability:multivariate")is False, they cannot handle multivariate series, so eithern_channels == 1is true or X is 2D of shape(n_cases, n_timepoints). Ifself.get_tag( "capability:unequal_length")is False, they cannot handle unequal length input. In both situations, aValueErroris raised if X has a characteristic that the estimator does not have the capability for is passed.- ynp.ndarray
1D np.array of float or str, of shape
(n_cases)- class labels (ground truth) for fitting indices corresponding to instance indices in X.- metricUnion[str, callable], default=”accuracy”,
Defines the scoring metric to test the fit of the model. For supported strings arguments, check sklearn.metrics.get_scorer_names.
- use_probabool, default=False,
Argument to check if scorer works on probability estimates or not.
- metric_paramsdict, default=None,
Contains parameters to be passed to the scoring function. If None, no parameters are passed.
- Returns:
- scorefloat
Accuracy score of predict(X) vs y.
- set_params(**params)[source]¶
Set the parameters of this estimator.
The method works on simple estimators as well as on nested objects (such as
Pipeline). The latter have parameters of the form<component>__<parameter>so that it’s possible to update each component of a nested object.- Parameters:
- **paramsdict
Estimator parameters.
- Returns:
- selfestimator instance
Estimator instance.