@ Лиан, я думаю, вы все делаете правильно. Пожалуйста, проверьте ваши данные. Я провел эксперимент с набором данных sklearn, и он работает, как и ожидалось.
from sklearn.preprocessing import StandardScaler
from sklearn.neural_network import MLPRegressor
from sklearn.pipeline import Pipeline
from sklearn.model_selection import GridSearchCV
from sklearn.datasets import load_boston
from sklearn.model_selection import train_test_split
import numpy as np
x,y = load_boston(return_X_y=True)
xtrain, xtest, ytrain, ytest = train_test_split(x,y, random_state=6784)
pipe_MLPRegressor = Pipeline([('scaler', StandardScaler()),
('MLPRegressor', MLPRegressor(random_state = 42))])
grid_params_MLPRegressor = [{
'MLPRegressor__solver': ['lbfgs'],
'MLPRegressor__max_iter': [100,200,300,500],
'MLPRegressor__activation' : ['relu','logistic','tanh'],
'MLPRegressor__hidden_layer_sizes':[(2,), (4,),(2,2),(4,4),(4,2),(10,10),(2,
2,2)],}]
CV_mlpregressor = GridSearchCV (estimator = pipe_MLPRegressor,
param_grid = grid_params_MLPRegressor,
cv = 5,return_train_score=True, verbose=0)
CV_mlpregressor.fit(xtrain, ytrain)
ypred=CV_mlpregressor.predict(xtest)
print np.c_[ytest, ypred]
Это печатает
array([[ 29.9 , 30.79749986],
[ 22.5 , 24.52180656],
[ 22.6 , 18.9567779 ],
[ 28.7 , 22.17189123],
[ 13.8 , 19.16797811],
[ 21.2 , 24.63527335],
[ 11.3 , 13.58962076],
[ 23. , 18.33693455],
[ 12.7 , 15.52294714],
[ 23.3 , 26.65083451],
[ 25.3 , 24.04219813],
[ 22.6 , 19.81454969],
[ 36.2 , 22.16994764],
[ 17.9 , 11.1221789 ],
[ 18.5 , 17.84162452],
[ 16.8 , 22.99832673],
[ 20.3 , 20.22598426],
[ 23.9 , 26.80997945],
[ 17.6 , 16.08188321],
[ 23.2 , 18.5995955 ],
[ 48.3 , 43.37911488],
[ 19.1 , 22.36379857],