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Python lasagne.TrainSplit方法代碼示例

本文整理匯總了Python中nolearn.lasagne.TrainSplit方法的典型用法代碼示例。如果您正苦於以下問題:Python lasagne.TrainSplit方法的具體用法?Python lasagne.TrainSplit怎麽用?Python lasagne.TrainSplit使用的例子?那麽, 這裏精選的方法代碼示例或許可以為您提供幫助。您也可以進一步了解該方法所在nolearn.lasagne的用法示例。


在下文中一共展示了lasagne.TrainSplit方法的6個代碼示例,這些例子默認根據受歡迎程度排序。您可以為喜歡或者感覺有用的代碼點讚,您的評價將有助於係統推薦出更棒的Python代碼示例。

示例1: model_initial

# 需要導入模塊: from nolearn import lasagne [as 別名]
# 或者: from nolearn.lasagne import TrainSplit [as 別名]
def model_initial(X_train,y_train,max_iter = 5):
    global params, val_acc
    params = []
    val_acc = np.zeros(max_iter)
    lr = theano.shared(np.float32(1e-4))
    for iteration in range(max_iter):
        print 'Initializing weights (%d/5) ...'%(iteration+1)
        network_init = create_network()
        net_init = NeuralNet(
                network_init,
                max_epochs=3,
                update=adam,
                update_learning_rate=lr,
                train_split=TrainSplit(eval_size=0.1),
                batch_iterator_train=BatchIterator(batch_size=32),
                batch_iterator_test=BatchIterator(batch_size=64),
                on_training_finished=[SaveTrainHistory(iteration = iteration)],
                verbose=0)
        net_init.initialize()
        net_init.fit(X_train, y_train)
        
#model training 
開發者ID:kimmo1019,項目名稱:Deopen,代碼行數:24,代碼來源:Deopen_classification.py

示例2: model_train

# 需要導入模塊: from nolearn import lasagne [as 別名]
# 或者: from nolearn.lasagne import TrainSplit [as 別名]
def model_train(X_train, y_train,learning_rate = 1e-4,epochs = 50):
    network = create_network()
    lr = theano.shared(np.float32(learning_rate))
    net = NeuralNet(
                network,
                max_epochs=epochs,
                update=adam,
                update_learning_rate=lr,
                train_split=TrainSplit(eval_size=0.1),
                batch_iterator_train=BatchIterator(batch_size=32),
                batch_iterator_test=BatchIterator(batch_size=64),
                #on_training_started=[LoadBestParam(iteration=val_acc.argmax())],
                on_epoch_finished=[EarlyStopping(patience=5)],
                verbose=1)
    print 'Loading pre-training weights...'
    net.load_params_from(params[val_acc.argmax()])
    print 'Continue to train...'
    net.fit(X_train, y_train)
    print 'Model training finished.'
    return net


#model testing 
開發者ID:kimmo1019,項目名稱:Deopen,代碼行數:25,代碼來源:Deopen_classification.py

示例3: model_train

# 需要導入模塊: from nolearn import lasagne [as 別名]
# 或者: from nolearn.lasagne import TrainSplit [as 別名]
def model_train(X_train, y_train,learning_rate = 1e-4,epochs = 50):
    network = create_network()
    lr = theano.shared(np.float32(learning_rate))
    net = NeuralNet(
                network,
                max_epochs=epochs,
                update=adam,
                update_learning_rate=lr,
                train_split=TrainSplit(eval_size=0.1),
                batch_iterator_train=BatchIterator(batch_size=32),
                batch_iterator_test=BatchIterator(batch_size=64),
                regression = True,
                objective_loss_function = squared_error,
                #on_training_started=[LoadBestParam(iteration=val_loss.argmin())],
                on_epoch_finished=[EarlyStopping(patience=5)],
                verbose=1)
    print 'loading pre-training weights...'
    net.load_params_from(params[val_loss.argmin()])
    print 'continue to train...'
    net.fit(X_train, y_train)
    print 'training finished'
    return net

#model testing 
開發者ID:kimmo1019,項目名稱:Deopen,代碼行數:26,代碼來源:Deopen_regression.py

示例4: model_initial

# 需要導入模塊: from nolearn import lasagne [as 別名]
# 或者: from nolearn.lasagne import TrainSplit [as 別名]
def model_initial(X_train,y_train,max_iter = 5):
    global params, val_loss
    params = []
    val_loss = np.zeros(max_iter)
    lr = theano.shared(np.float32(1e-4))
    for iteration in range(max_iter):
        print 'initializing weights (%d/5) ...'%(iteration+1)
        print iteration
        network_init = create_network()
        net_init = NeuralNet(
                network_init,
                max_epochs=3,
                update=adam,
                update_learning_rate=lr,
                train_split=TrainSplit(eval_size=0.1),
                batch_iterator_train=BatchIterator(batch_size=32),
                batch_iterator_test=BatchIterator(batch_size=64),
                regression = True,
                objective_loss_function = squared_error,
                on_training_finished=[SaveTrainHistory(iteration = iteration)],
                verbose=0)
        net_init.initialize()
        net_init.fit(X_train, y_train)


#model training 
開發者ID:kimmo1019,項目名稱:Deopen,代碼行數:28,代碼來源:Deopen_regression.py

示例5: __init__

# 需要導入模塊: from nolearn import lasagne [as 別名]
# 或者: from nolearn.lasagne import TrainSplit [as 別名]
def __init__(self, isTrain, isNN):
        super(RegressionNN, self).__init__(isTrain, isNN)
        # data preprocessing
        #self.dataPreprocessing()

        self.net1 = NeuralNet(
                        layers=[  # three layers: one hidden layer
                            ('input', layers.InputLayer),
                            ('hidden', layers.DenseLayer),
                            #('hidden2', layers.DenseLayer),
                            #('hidden3', layers.DenseLayer),
                            ('output', layers.DenseLayer),
                            ],
                        # layer parameters:
                        input_shape=(None, 13),  # input dimension is 13
                        hidden_num_units=6,  # number of units in hidden layer
                        #hidden2_num_units=8,  # number of units in hidden layer
                        #hidden3_num_units=4,  # number of units in hidden layer
                        output_nonlinearity=None,  # output layer uses sigmoid function
                        output_num_units=1,  # output dimension is 1

                        # obejctive function
                        objective_loss_function = lasagne.objectives.squared_error,

                        # optimization method:
                        update=lasagne.updates.nesterov_momentum,
                        update_learning_rate=0.002,
                        update_momentum=0.4,

                        # use 25% as validation
                        train_split=TrainSplit(eval_size=0.2),

                        regression=True,  # flag to indicate we're dealing with regression problem
                        max_epochs=100,  # we want to train this many epochs
                        verbose=0,
                        ) 
開發者ID:junlulocky,項目名稱:AirTicketPredicting,代碼行數:38,代碼來源:RegressionNN.py

示例6: __init__

# 需要導入模塊: from nolearn import lasagne [as 別名]
# 或者: from nolearn.lasagne import TrainSplit [as 別名]
def __init__(self, isTrain):
        super(RegressionUniformBlending, self).__init__(isTrain)
        # data preprocessing
        #self.dataPreprocessing()

        self.net1 = NeuralNet(
                        layers=[  # three layers: one hidden layer
                            ('input', layers.InputLayer),
                            ('hidden', layers.DenseLayer),
                            #('hidden2', layers.DenseLayer),
                            #('hidden3', layers.DenseLayer),
                            ('output', layers.DenseLayer),
                            ],
                        # layer parameters:
                        input_shape=(None, 13),  # input dimension is 13
                        hidden_num_units=6,  # number of units in hidden layer
                        #hidden2_num_units=8,  # number of units in hidden layer
                        #hidden3_num_units=4,  # number of units in hidden layer
                        output_nonlinearity=None,  # output layer uses sigmoid function
                        output_num_units=1,  # output dimension is 1

                        # obejctive function
                        objective_loss_function = lasagne.objectives.squared_error,

                        # optimization method:
                        update=lasagne.updates.nesterov_momentum,
                        update_learning_rate=0.002,
                        update_momentum=0.4,

                        # use 25% as validation
                        train_split=TrainSplit(eval_size=0.2),

                        regression=True,  # flag to indicate we're dealing with regression problem
                        max_epochs=100,  # we want to train this many epochs
                        verbose=0,
                        )

        # Create linear regression object
        self.linRegr = linear_model.LinearRegression()

        # Create KNN regression object
        self.knn = neighbors.KNeighborsRegressor(86, weights='distance')

        # Create Decision Tree regression object
        self.decisionTree = DecisionTreeRegressor(max_depth=7, max_features=None)

        # Create AdaBoost regression object
        decisionReg = DecisionTreeRegressor(max_depth=10)
        rng = np.random.RandomState(1)
        self.adaReg = AdaBoostRegressor(decisionReg,
                          n_estimators=400,
                          random_state=rng)

        # Create linear regression object
        self.model = RandomForestRegressor(max_features='sqrt', n_estimators=32, max_depth=39) 
開發者ID:junlulocky,項目名稱:AirTicketPredicting,代碼行數:57,代碼來源:RegressionUniformBlending.py


注:本文中的nolearn.lasagne.TrainSplit方法示例由純淨天空整理自Github/MSDocs等開源代碼及文檔管理平台,相關代碼片段篩選自各路編程大神貢獻的開源項目,源碼版權歸原作者所有,傳播和使用請參考對應項目的License;未經允許,請勿轉載。