Remarque
L’accès à cette page nécessite une autorisation. Vous pouvez essayer de vous connecter ou de modifier des répertoires.
L’accès à cette page nécessite une autorisation. Vous pouvez essayer de modifier des répertoires.
Description
Une instance des objets suivants est retournée par chaque fonction d’apprentissage. Ils héritent tous de la classe BaseLearner et implémentent des méthodes courantes.
get_algo_argsretourne les paramètres d’apprentissage,coef_récupère les coefficients,summary_retourne les informations d’apprentissage.
Le contenu change en fonction de l’apprenant formé.
BaseLearner de classe
microsoftml.modules.base_learner.BaseLearner(**kwargs)
Classe de base pour tous les apprenants.
coef_
Obtient les coefficients de modèle.
fit(formula: str, data: [revoscalepy.datasource.RxDataSource.RxDataSource,
pandas.core.frame.DataFrame], ml_transforms: list = None,
ml_transform_vars: list = None, row_selection: str = None,
transforms: dict = None, transform_objects: dict = None,
transform_function: str = None,
transform_variables: list = None,
transform_packages: list = None,
transform_environment: dict = None, blocks_per_read: int = None,
report_progress: int = None, verbose: int = 1,
compute_context: revoscalepy.computecontext.RxComputeContext.RxComputeContext = None,
**kargs)
Ajuste le modèle.
get_algo_args()
Obtient les arguments de l’algorithme.
predict(*args, **kwargs)
Appelle microsoftml.rx_predict().
summary_
Obtenir le résumé du modèle.
Apprenants spécifiques
Modèle binaire ou de régression FastTree
microsoftml.FastTrees(method: ['binary', 'regression'] = 'binary',
num_trees: int = 100, num_leaves: int = 20,
learning_rate: float = 0.2, min_split: int = 10,
example_fraction: float = 0.7, feature_fraction: float = 1,
split_fraction: float = 1, num_bins: int = 255,
first_use_penalty: float = 0, gain_conf_level: float = 0,
unbalanced_sets: bool = False, train_threads: int = 8,
random_seed: int = None,
ensemble: microsoftml.modules.ensemble.EnsembleControl = None,
**kargs)
Obtenir le nœud d’apprentissage
get_train_node(**all_args)
Svm d’une classe
microsoftml.OneClassSvm(cache_size: float = 100,
kernel: [<function linear_kernel at 0x0000007156EAC8C8>,
<function polynomial_kernel at 0x0000007156EAC950>,
<function rbf_kernel at 0x0000007156EAC7B8>,
<function sigmoid_kernel at 0x0000007156EACA60>] = {'Name': 'RbfKernel',
'Settings': {}}, epsilon: float = 0.001, nu: float = 0.1,
shrink: bool = True, normalize: ['No', 'Warn', 'Auto',
'Yes'] = 'Auto',
ensemble: microsoftml.modules.ensemble.EnsembleControl = None,
**kargs)
get_train_node(**all_args)
Modèle binaire ou de régression FastForest
microsoftml.FastForest(method: ['binary', 'regression'] = 'binary',
num_trees: int = 100, num_leaves: int = 20,
min_split: int = 10, example_fraction: float = 0.7,
feature_fraction: float = 0.7, split_fraction: float = 0.7,
num_bins: int = 255, first_use_penalty: float = 0,
gain_conf_level: float = 0, train_threads: int = 8,
random_seed: int = None,
ensemble: microsoftml.modules.ensemble.EnsembleControl = None,
**kargs)
get_train_node(**all_args)
Modèle binaire ou de régression SDCA
microsoftml.FastLinear(method: ['binary', 'regression'] = 'binary',
loss_function: {'binary': [<function hinge_loss at 0x0000007156E8EA60>,
<function log_loss at 0x0000007156E8E6A8>,
<function smoothed_hinge_loss at 0x0000007156E8EAE8>],
'regression': [<function squared_loss at 0x0000007156E8E950>]} = None,
l2_weight: float = None, l1_weight: float = None,
train_threads: int = None, convergence_tolerance: float = 0.1,
max_iterations: int = None, shuffle: bool = True,
check_frequency: int = None, normalize: ['No', 'Warn', 'Auto',
'Yes'] = 'Auto',
ensemble: microsoftml.modules.ensemble.EnsembleControl = None,
**kargs)
get_train_node(**all_args)
Régression logistique
microsoftml.LogisticRegression(method: ['binary',
'multiClass'] = 'binary', l2_weight: float = 1,
l1_weight: float = 1, opt_tol: float = 1e-07,
memory_size: int = 20, init_wts_diameter: float = 0,
max_iterations: int = 2147483647,
show_training_stats: bool = False, sgd_init_tol: float = 0,
train_threads: int = None, dense_optimizer: bool = False,
normalize: ['No', 'Warn', 'Auto', 'Yes'] = 'Auto',
ensemble: microsoftml.modules.ensemble.EnsembleControl = None,
**kargs)
Réseau neuronal
microsoftml.NeuralNetwork(method: ['binary', 'multiClass',
'regression'] = 'binary', num_hidden_nodes: int = 100,
num_iterations: int = 100, optimizer: ['adadelta_optimizer',
'sgd_optimizer'] = {'Name': 'SgdOptimizer', 'Settings': {}},
net_definition: str = None, init_wts_diameter: float = 0.1,
max_norm: float = 0, acceleration: ['avx_math', 'clr_math',
'gpu_math', 'mkl_math', 'sse_math'] = {'Name': 'AvxMath',
'Settings': {}}, mini_batch_size: int = 1, normalize: ['No',
'Warn', 'Auto', 'Yes'] = 'Auto',
ensemble: microsoftml.modules.ensemble.EnsembleControl = None,
**kargs)
get_train_node(**all_args)
Obtenir un modèle aic
aic(k=2)
Obtenir des coefficients de modèle
coef_
Obtenir la déviance résiduelle
deviance_
Obtenir des arguments d’algorithme
get_algo_args()
Obtenir le nœud d’apprentissage
get_train_node(**all_args)
Contenu connexe
rx_fast_forest, rx_fast_trees, , rx_logistic_regressionrx_fast_linear, rx_neural_network, , rx_oneclass_svm,rx_predict