from sklearn.kernel_approximation import SkewedChi2Sampler as SKLModel
import lale.helpers
import lale.operators
from numpy import nan, inf
[docs]class SkewedChi2SamplerImpl():
def __init__(self, skewedness=1.0, n_components=100, random_state=None):
self._hyperparams = {
'skewedness': skewedness,
'n_components': n_components,
'random_state': random_state}
[docs] def fit(self, X, y=None):
self._sklearn_model = SKLModel(**self._hyperparams)
if (y is not None):
self._sklearn_model.fit(X, y)
else:
self._sklearn_model.fit(X)
return self
_hyperparams_schema = {
'$schema': 'http://json-schema.org/draft-04/schema#',
'description': 'inherited docstring for SkewedChi2Sampler Approximates feature map of the "skewed chi-squared" kernel by Monte',
'allOf': [{
'type': 'object',
'required': ['skewedness', 'n_components', 'random_state'],
'relevantToOptimizer': ['n_components'],
'additionalProperties': False,
'properties': {
'skewedness': {
'type': 'number',
'default': 1.0,
'description': '"skewedness" parameter of the kernel. Needs to be cross-validated.'},
'n_components': {
'type': 'integer',
'minimumForOptimizer': 2,
'maximumForOptimizer': 256,
'distribution': 'uniform',
'default': 100,
'description': 'number of Monte Carlo samples per original feature.'},
'random_state': {
'anyOf': [{
'type': 'integer'}, {
'type': 'object'}, {
'enum': [None]}],
'default': None,
'description': 'If int, random_state is the seed used by the random number generator;'},
}}],
}
_input_fit_schema = {
'$schema': 'http://json-schema.org/draft-04/schema#',
'description': 'Fit the model with X.',
'type': 'object',
'properties': {
'X': {
'type': 'array',
'items': {
'type': 'array',
'items': {
'type': 'number'},
},
'description': 'Training data, where n_samples in the number of samples'},
},
}
_input_transform_schema = {
'$schema': 'http://json-schema.org/draft-04/schema#',
'description': 'Apply the approximate feature map to X.',
'type': 'object',
'properties': {
'X': {
'type': 'array',
'items': {
'type': 'array',
'items': {
'type': 'number'},
},
'description': 'New data, where n_samples in the number of samples'},
},
}
_output_transform_schema = {
'$schema': 'http://json-schema.org/draft-04/schema#',
'description': 'Apply the approximate feature map to X.',
'type': 'array',
'items': {
'type': 'array',
'items': {
'type': 'number'},
},
}
_combined_schemas = {
'$schema': 'http://json-schema.org/draft-04/schema#',
'description': 'Combined schema for expected data and hyperparameters.',
'type': 'object',
'tags': {
'pre': [],
'op': ['transformer'],
'post': []},
'properties': {
'hyperparams': _hyperparams_schema,
'input_fit': _input_fit_schema,
'input_transform': _input_transform_schema,
'output_transform': _output_transform_schema},
}
if (__name__ == '__main__'):
lale.helpers.validate_is_schema(_combined_schemas)
SkewedChi2Sampler = lale.operators.make_operator(SkewedChi2SamplerImpl, _combined_schemas)