pysad.models.RobustRandomCutForest
- class pysad.models.RobustRandomCutForest(num_trees=4, shingle_size=4, tree_size=256)[source]
Robust Random Cut Forest model [BGMRS16]. The implementation uses rrcf library [BBMT19].
- Parameters:
Methods
__init__([num_trees, shingle_size, tree_size])fit(X[, y])Fits the model to all instances in order.
fit_partial(X[, y])Fits the model to next instance.
fit_score(X[, y])This helper method applies fit_score_partial to all instances in order.
fit_score_partial(X[, y])Applies fit_partial and score_partial to the next instance, respectively.
score(X)Scores all instances via score_partial iteratively.
Scores the anomalousness of the next instance.
- fit(X, y=None)
Fits the model to all instances in order.
- fit_score(X, y=None)
This helper method applies fit_score_partial to all instances in order.
- Parameters:
X (np.float64 array of shape (num_instances, num_features)) – The instances in order to fit.
y (np.int32 array of shape (num_instances, )) – The labels of the instances in order to fit (Optional for unsupervised models, default=None).
- Returns:
The anomalousness scores of the instances in order.
- Return type:
np.float64 array of shape (num_instances,)
- fit_score_partial(X, y=None)
Applies fit_partial and score_partial to the next instance, respectively.
- score(X)
Scores all instances via score_partial iteratively.
- Parameters:
X (np.float64 array of shape (num_instances, num_features)) – The instances in order to score.
- Returns:
The anomalousness scores of the instances in order.
- Return type:
np.float64 array of shape (num_instances,)
- score_partial(X)[source]
Scores the anomalousness of the next instance.
- Parameters:
X (np.float64 array of shape (num_features,)) – The instance to score. Higher scores represent more anomalous instances whereas lower scores correspond to more normal instances.
- Returns:
The anomalousness score of the input instance.
- Return type: