pdmlabs.evaluation.vus.models.distance#
Classes of distance measure for model type A
Classes
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The function class for dynamic time warping measure |
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The function class for edit distance on real sequences |
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The function class for Lp euclidean norm :2: (WARNING/2) Title underline too short. The function class for Lp euclidean norm ---------- Power int, optional (default=1) The power of the lp norm. For power = k, the measure is calculagted by |x - y|_k :4: (WARNING/2) Inline substitution_reference start-string without end-string. neighborhood int, optional (default=max (100, 10*window size)) The length of neighborhood to derivete the normalizing constant D which is based on the difference of maximum and minimum in the neighborhood minus window. window: int, optional (default = length of input data) The length of the subsequence to be compaired :10: (WARNING/2) Definition list ends without a blank line; unexpected unindent. pdmlabs.evaluation.vus.models.distance.decision_scores_ |
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The function class for Fourier measure good for contextual anomolies ---------- power: int, optional (default = 2) Lp norm for dissimiarlity measure considered .. attribute:: decision_scores_. |
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The function class for garch measure :2: (WARNING/2) Title underline too short. The function class for garch measure ---------- p, q int, optional (default=1, 1) The order of the garch model to be fitted on the residual mean string, optional (default='zero' ) The forecast conditional mean. vol: string, optional (default = 'garch') he forecast conditional variance. :9: (WARNING/2) Definition list ends without a blank line; unexpected unindent. pdmlabs.evaluation.vus.models.distance.decision_scores_ |
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The function class for Mahalanobis measure :2: (WARNING/2) Title underline too short. The function class for Mahalanobis measure ---------- Probability boolean, optional (default=False) Whether to derive the anomoly score by the probability that such point occurs neighborhood int, optional (default=max (100, 10*window size)) The length of neighborhood to derivete the normalizing constant D which is based on the difference of maximum and minimum in the neighborhood minus window. :8: (WARNING/2) Definition list ends without a blank line; unexpected unindent. pdmlabs.evaluation.vus.models.distance.decision_scores_ |
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The function class for SSA measure good for contextual anomolies ---------- method : string, optional (default='linear' ) The method to fit the line and derives the SSA score e: float, optional (default = 1) The upper bound to start new line search for linear method .. attribute:: decision_scores_. |
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Function class for Time-warped edit distance(TWED) measure |
- class pdmlabs.evaluation.vus.models.distance.DTW(method='L2')#
Bases:
objectThe function class for dynamic time warping measure
Avaliable “L2”, “L1”, and custom
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- measure(X1, X2, start_index)#
Obtain the SSA similarity score. :param X1: the reference timeseries :type X1: numpy array of shape (n, ) :param X2: the tested timeseries :type X2: numpy array of shape (n, ) :param index: :type index: int, :param current index for the subseqeuence that is being measured:
- Returns:
score
- Return type:
float, the higher the more dissimilar are the two curves
- set_param()#
update the parameters with the detector that is used since the FFT measure doens’t need the attributes of detector or characteristics of X_train, the process is omitted.
- class pdmlabs.evaluation.vus.models.distance.EDRS(method='L1', ep=False, vol=False)#
Bases:
objectThe function class for edit distance on real sequences
Avaliable “L2”, “L1”, and custom
- ep: float, optiona (default = 0.1)
the threshold value to decide Di_j
- votboolean, optional (default = False)
whether to adapt a chaging votilities estimaed by garch for ep at different windows.
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- measure(X1, X2, start_index)#
Obtain the SSA similarity score. :param X1: the reference timeseries :type X1: numpy array of shape (n, ) :param X2: the tested timeseries :type X2: numpy array of shape (n, ) :param index: :type index: int, :param current index for the subseqeuence that is being measured:
- Returns:
score
- Return type:
float, the higher the more dissimilar are the two curves
- set_param()#
update the ep based on the votalitiy of the model
- class pdmlabs.evaluation.vus.models.distance.Euclidean(power=1, neighborhood=100, window=20, norm=False)#
Bases:
objectThe function class for Lp euclidean norm#
- Powerint, optional (default=1)
The power of the lp norm. For power = k, the measure is calculagted by |x - y|_k
- neighborhoodint, optional (default=max (100, 10*window size))
The length of neighborhood to derivete the normalizing constant D which is based on the difference of maximum and minimum in the neighborhood minus window.
- window: int, optional (default = length of input data)
The length of the subsequence to be compaired
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- measure(X, Y, index)#
Derive the decision score based on the given distance measure :param X: The real input samples subsequence. :type X: numpy array of shape (n_samples, ) :param Y: The estimated input samples subsequence. :type Y: numpy array of shape (n_samples, ) :param Index: :type Index: int :param the index of the starting point in the subsequence:
- Returns:
score – dissimiarity score between the two subsquence
- Return type:
float
- set_param()#
- class pdmlabs.evaluation.vus.models.distance.Fourier(power=2)#
Bases:
objectThe function class for Fourier measure good for contextual anomolies ———- power: int, optional (default = 2)
Lp norm for dissimiarlity measure considered
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- measure(X2, X3, start_index)#
Obtain the SSA similarity score. :param X2: the reference timeseries :type X2: numpy array of shape (n, ) :param X3: the tested timeseries :type X3: numpy array of shape (n, ) :param index: :type index: int, :param current index for the subseqeuence that is being measured:
- Returns:
score
- Return type:
float, the higher the more dissimilar are the two curves
- set_param()#
update the parameters with the detector that is used since the FFT measure doens’t need the attributes of detector or characteristics of X_train, the process is omitted.
- class pdmlabs.evaluation.vus.models.distance.Garch(p=1, q=1, mean='zero', vol='garch')#
Bases:
objectThe function class for garch measure#
- p, qint, optional (default=1, 1)
The order of the garch model to be fitted on the residual
- meanstring, optional (default=’zero’ )
The forecast conditional mean.
- vol: string, optional (default = ‘garch’)
he forecast conditional variance.
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- measure(X, Y, index)#
Derive the decision score based on the given distance measure :param X: The real input samples subsequence. :type X: numpy array of shape (n_samples, ) :param Y: The estimated input samples subsequence. :type Y: numpy array of shape (n_samples, ) :param Index: :type Index: int :param the index of the starting point in the subsequence:
- Returns:
score – dissimiarity score between the two subsquences
- Return type:
float
- set_param()#
update the parameters with the detector that is used
- class pdmlabs.evaluation.vus.models.distance.Mahalanobis(probability=False)#
Bases:
objectThe function class for Mahalanobis measure#
- Probabilityboolean, optional (default=False)
Whether to derive the anomoly score by the probability that such point occurs
- neighborhoodint, optional (default=max (100, 10*window size))
The length of neighborhood to derivete the normalizing constant D which is based on the difference of maximum and minimum in the neighborhood minus window.
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- measure(X, Y, index)#
Derive the decision score based on the given distance measure :param X: The real input samples subsequence. :type X: numpy array of shape (n_samples, ) :param Y: The estimated input samples subsequence. :type Y: numpy array of shape (n_samples, ) :param Index: :type Index: int :param the index of the starting point in the subsequence:
- Returns:
score – dissimiarity score between the two subsquence
- Return type:
float
- norm_pdf_multivariate(x)#
multivarite normal density function
- normpdf(x)#
univariate normal
- set_param()#
update the parameters with the detector that is used
- class pdmlabs.evaluation.vus.models.distance.SSA_DISTANCE(method='linear', e=1)#
Bases:
objectThe function class for SSA measure good for contextual anomolies ———- method : string, optional (default=’linear’ )
The method to fit the line and derives the SSA score
- e: float, optional (default = 1)
The upper bound to start new line search for linear method
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- Linearization(X2)#
Obtain the linearized curve. :param X2: the time series curve to be fitted :type X2: numpy array of shape (n, ) :param e: :type e: float, integer, or numpy array :param weights to obtain the:
- Returns:
fit
- Return type:
parameters for the fitted linear curve
- measure(X2, X3, start_index)#
Obtain the SSA similarity score. :param X2: the reference timeseries :type X2: numpy array of shape (n, ) :param X3: the tested timeseries :type X3: numpy array of shape (n, ) :param e: :type e: float, integer, or numpy array :param weights to obtain the:
- Returns:
score
- Return type:
float, the higher the more dissimilar are the two curves
- set_param()#
update the parameters with the detector that is used. Since the SSA measure doens’t need the attributes of detector or characteristics of X_train, the process is omitted.
- class pdmlabs.evaluation.vus.models.distance.TWED(gamma=0.1, v=0.1)#
Bases:
objectFunction class for Time-warped edit distance(TWED) measure
Avaliable “L2”, “L1”, and custom
- gamma: float, optiona (default = 0.1)
mismatch penalty
- vfloat, optional (default = False)
stifness parameter
- decision_scores_#
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.
- Type:
numpy array of shape (n_samples,)
- detector#
the anomaly detector that is used
- Type:
Object classifier
- measure(A, B, start_index)#
Obtain the SSA similarity score. :param X1: the reference timeseries :type X1: numpy array of shape (n, ) :param X2: the tested timeseries :type X2: numpy array of shape (n, ) :param index: :type index: int, :param current index for the subseqeuence that is being measured:
- Returns:
score
- Return type:
float, the higher the more dissimilar are the two curves
- set_param()#
No need