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- from typing import Any, Callable, List, Dict, Union, Optional, Sequence, Tuple
- from numpy import ndarray
- from collections import OrderedDict
- from scipy import sparse
- import os
- import sklearn
- import numpy
- import typing
-
- # Custom import commands if any
- import warnings
- import numpy as np
- from sklearn.utils import check_array
- from sklearn.exceptions import NotFittedError
- # from numba import njit
- from pyod.utils.utility import argmaxn
-
- from d3m.container.numpy import ndarray as d3m_ndarray
- from d3m.container import DataFrame as d3m_dataframe
- from d3m.metadata import hyperparams, params, base as metadata_base
- from d3m import utils
- from d3m.base import utils as base_utils
- from d3m.exceptions import PrimitiveNotFittedError
- from d3m.primitive_interfaces.base import CallResult, DockerContainer
-
- # from d3m.primitive_interfaces.supervised_learning import SupervisedLearnerPrimitiveBase
- from d3m.primitive_interfaces.unsupervised_learning import UnsupervisedLearnerPrimitiveBase
- from d3m.primitive_interfaces.transformer import TransformerPrimitiveBase
-
- from d3m.primitive_interfaces.base import ProbabilisticCompositionalityMixin, ContinueFitMixin
- from d3m import exceptions
- import pandas
-
- from d3m import container, utils as d3m_utils
-
- from detection_algorithm.UODBasePrimitive import Params_ODBase, Hyperparams_ODBase, UnsupervisedOutlierDetectorBase
- from pyod.models.loda import LODA
- import uuid
- # from typing import Union
-
- Inputs = d3m_dataframe
- Outputs = d3m_dataframe
-
-
- class Params(Params_ODBase):
- ######## Add more Attributes #######
-
- pass
-
-
- class Hyperparams(Hyperparams_ODBase):
- ######## Add more Hyperparamters #######
-
- n_bins = hyperparams.Hyperparameter[int](
- default=10,
- description='The number of bins for the histogram.',
- semantic_types=['https://metadata.datadrivendiscovery.org/types/TuningParameter']
- )
-
- n_random_cuts = hyperparams.Hyperparameter[int](
- default=100,
- description='The number of random cuts.',
- semantic_types=['https://metadata.datadrivendiscovery.org/types/TuningParameter']
- )
-
- pass
-
-
- class LODAPrimitive(UnsupervisedOutlierDetectorBase[Inputs, Outputs, Params, Hyperparams]):
- """
- Wrap of Pyod loda. Loda: Lightweight on-line detector of anomalies. See
- :cite:`pevny2016loda` for more information.
-
- Parameters
- ----------
- contamination : float in (0., 0.5), optional (default=0.1)
- The amount of contamination of the data set,
- i.e. the proportion of outliers in the data set. Used when fitting to
- define the threshold on the decision function.
-
- n_bins : int, optional (default = 10)
- The number of bins for the histogram.
-
- n_random_cuts : int, optional (default = 100)
- The number of random cuts.
-
- Attributes
- ----------
- decision_scores_ : numpy array of shape (n_samples,)
- The outlier scores of the training data.
- The higher, the more abnormal. Outliers tend to have higher
- scores. This value is available once the detector is
- fitted.
- threshold_ : float
- The threshold is based on ``contamination``. It is the
- ``n_samples * contamination`` most abnormal samples in
- ``decision_scores_``. The threshold is calculated for generating
- binary outlier labels.
- labels_ : int, either 0 or 1
- The binary labels of the training data. 0 stands for inliers
- and 1 for outliers/anomalies. It is generated by applying
- ``threshold_`` on ``decision_scores_``.
- """
-
- metadata = metadata_base.PrimitiveMetadata({
- "name": "TODS.anomaly_detection_primitives.LODAPrimitive",
- "python_path": "d3m.primitives.anomaly_detection.LODAPrimitive",
- "python_path": "d3m.primitives.tods.detection_algorithm.pyod_loda",
- "source": {'name': "DATALAB @Taxes A&M University", 'contact': 'mailto:khlai037@tamu.edu',
- 'uris': ['https://gitlab.com/lhenry15/tods.git']},
- "algorithm_types": [metadata_base.PrimitiveAlgorithmType.LOCAL_OUTLIER_FACTOR, ], # Wrong
- "primitive_family": metadata_base.PrimitiveFamily.ANOMALY_DETECTION,
- "version": "0.0.1",
- "hyperparams_to_tune": ['n_bins', 'n_random_cuts', 'contamination'],
- "id": str(uuid.uuid3(uuid.NAMESPACE_DNS, 'LODAPrimitive')),
- })
-
- def __init__(self, *,
- hyperparams: Hyperparams, #
- random_seed: int = 0,
- docker_containers: Dict[str, DockerContainer] = None) -> None:
- super().__init__(hyperparams=hyperparams, random_seed=random_seed, docker_containers=docker_containers)
-
- self._clf = LODA(contamination=hyperparams['contamination'],
- n_bins=hyperparams['n_bins'],
- n_random_cuts=hyperparams['n_random_cuts'],
- )
-
- return
-
- def set_training_data(self, *, inputs: Inputs) -> None:
- """
- Set training data for outlier detection.
- Args:
- inputs: Container DataFrame
-
- Returns:
- None
- """
- super().set_training_data(inputs=inputs)
-
- def fit(self, *, timeout: float = None, iterations: int = None) -> CallResult[None]:
- """
- Fit model with training data.
- Args:
- *: Container DataFrame. Time series data up to fit.
-
- Returns:
- None
- """
- return super().fit()
-
- def produce(self, *, inputs: Inputs, timeout: float = None, iterations: int = None) -> CallResult[Outputs]:
- """
- Process the testing data.
- Args:
- inputs: Container DataFrame. Time series data up to outlier detection.
-
- Returns:
- Container DataFrame
- 1 marks Outliers, 0 marks normal.
- """
- return super().produce(inputs=inputs, timeout=timeout, iterations=iterations)
-
- def get_params(self) -> Params:
- """
- Return parameters.
- Args:
- None
-
- Returns:
- class Params
- """
- return super().get_params()
-
- def set_params(self, *, params: Params) -> None:
- """
- Set parameters for outlier detection.
- Args:
- params: class Params
-
- Returns:
- None
- """
- super().set_params(params=params)
-
-
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