msmbuilder.preprocessing.Binarizer¶
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class msmbuilder.preprocessing.Binarizer(threshold=0.0, copy=True)¶
- Binarize data (set feature values to 0 or 1) according to a threshold - Values greater than the threshold map to 1, while values less than or equal to the threshold map to 0. With the default threshold of 0, only positive values map to 1. - Binarization is a common operation on text count data where the analyst can decide to only consider the presence or absence of a feature rather than a quantified number of occurrences for instance. - It can also be used as a pre-processing step for estimators that consider boolean random variables (e.g. modelled using the Bernoulli distribution in a Bayesian setting). - Read more in the User Guide. - Parameters: - threshold : float, optional (0.0 by default) - Feature values below or equal to this are replaced by 0, above it by 1. Threshold may not be less than 0 for operations on sparse matrices. - copy : boolean, optional, default True - set to False to perform inplace binarization and avoid a copy (if the input is already a numpy array or a scipy.sparse CSR matrix). - See also - binarize
- Equivalent function without the object oriented API.
 - Notes - If the input is a sparse matrix, only the non-zero values are subject to update by the Binarizer class. - This estimator is stateless (besides constructor parameters), the fit method does nothing but is useful when used in a pipeline. - Methods - fit(X[, y])- Fit Preprocessing to X. - fit_transform(sequences[, y])- Fit the model and apply preprocessing - get_params([deep])- Get parameters for this estimator. - partial_fit(sequence[, y])- Fit Preprocessing to X. - partial_transform(sequence)- Apply preprocessing to single sequence - set_params(**params)- Set the parameters of this estimator. - summarize()- Return some diagnostic summary statistics about this Markov model - transform(sequences)- Apply preprocessing to sequences - 
__init__(threshold=0.0, copy=True)¶
 - Methods - __init__([threshold, copy])- fit(X[, y])- Fit Preprocessing to X. - fit_transform(sequences[, y])- Fit the model and apply preprocessing - get_params([deep])- Get parameters for this estimator. - partial_fit(sequence[, y])- Fit Preprocessing to X. - partial_transform(sequence)- Apply preprocessing to single sequence - set_params(**params)- Set the parameters of this estimator. - summarize()- Return some diagnostic summary statistics about this Markov model - transform(sequences)- Apply preprocessing to sequences - 
fit(X, y=None)¶
- Fit Preprocessing to X. - Parameters: - sequence : array-like, [sequence_length, n_features] - A multivariate timeseries. - y : None - Ignored - Returns: - self 
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fit_transform(sequences, y=None)¶
- Fit the model and apply preprocessing - Parameters: - sequences: list of array-like, each of shape (n_samples_i, n_features) - Training data, where n_samples_i in the number of samples in sequence i and n_features is the number of features. - y : None - Ignored - Returns: - sequence_new : list of array-like, each of shape (n_samples_i, n_components) 
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get_params(deep=True)¶
- Get parameters for this estimator. - Parameters: - deep : boolean, optional - If True, will return the parameters for this estimator and contained subobjects that are estimators. - Returns: - params : mapping of string to any - Parameter names mapped to their values. 
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partial_fit(sequence, y=None)¶
- Fit Preprocessing to X. Parameters ———- sequence : array-like, [sequence_length, n_features] A multivariate timeseries.- y : None
- Ignored
 - self 
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partial_transform(sequence)¶
- Apply preprocessing to single sequence - Parameters: - sequence: array like, shape (n_samples, n_features) - A single sequence to transform - Returns: - out : array like, shape (n_samples, n_features) 
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set_params(**params)¶
- Set the parameters of this estimator. - The method works on simple estimators as well as on nested objects (such as pipelines). The latter have parameters of the form - <component>__<parameter>so that it’s possible to update each component of a nested object.- Returns: - self 
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summarize()¶
- Return some diagnostic summary statistics about this Markov model 
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transform(sequences)¶
- Apply preprocessing to sequences - Parameters: - sequences: list of array-like, each of shape (n_samples_i, n_features) - Sequence data to transform, where n_samples_i in the number of samples in sequence i and n_features is the number of features. - Returns: - sequence_new : list of array-like, each of shape (n_samples_i, n_components)