Python 如何使Keras神经网络在Iris数据上优于Logistic回归

Python 如何使Keras神经网络在Iris数据上优于Logistic回归,python,scikit-learn,deep-learning,keras,Python,Scikit Learn,Deep Learning,Keras,我正在比较Keras神经网络和简单的虹膜数据。我预计Keras NN将表现得更好,正如 但是为什么通过模仿那里的代码,Keras NN的结果比 逻辑回归 import seaborn as sns import numpy as np from sklearn.cross_validation import train_test_split from sklearn.linear_model import LogisticRegressionCV from keras.models import

我正在比较Keras神经网络和简单的虹膜数据。我预计Keras NN将表现得更好,正如

但是为什么通过模仿那里的代码,Keras NN的结果比 逻辑回归

import seaborn as sns
import numpy as np
from sklearn.cross_validation import train_test_split
from sklearn.linear_model import LogisticRegressionCV
from keras.models import Sequential
from keras.layers.core import Dense, Activation
from keras.utils import np_utils

# Prepare data
iris = sns.load_dataset("iris")
X = iris.values[:, 0:4]
y = iris.values[:, 4]

# Make test and train set
train_X, test_X, train_y, test_y = train_test_split(X, y, train_size=0.5, random_state=0)

################################
# Evaluate Logistic Regression
################################
lr = LogisticRegressionCV()
lr.fit(train_X, train_y)
pred_y = lr.predict(test_X)
print("Test fraction correct (LR-Accuracy) = {:.2f}".format(lr.score(test_X, test_y)))



################################
# Evaluate Keras Neural Network
################################

# Make ONE-HOT
def one_hot_encode_object_array(arr):
    '''One hot encode a numpy array of objects (e.g. strings)'''
    uniques, ids = np.unique(arr, return_inverse=True)
    return np_utils.to_categorical(ids, len(uniques))


train_y_ohe = one_hot_encode_object_array(train_y)
test_y_ohe = one_hot_encode_object_array(test_y)

model = Sequential()
model.add(Dense(16, input_shape=(4,)))
model.add(Activation('sigmoid'))
model.add(Dense(3))
model.add(Activation('softmax'))
model.compile(loss='categorical_crossentropy', metrics=['accuracy'], optimizer='adam')

# Actual modelling
model.fit(train_X, train_y_ohe, verbose=0, batch_size=1)
score, accuracy = model.evaluate(test_X, test_y_ohe, batch_size=16, verbose=0)
print("Test fraction correct (NN-Score) = {:.2f}".format(score))
print("Test fraction correct (NN-Accuracy) = {:.2f}".format(accuracy))
我正在使用这个版本的Keras

In [2]: keras.__version__
Out[2]: '1.0.1'
结果表明:

Test fraction correct (LR-Accuracy) = 0.83
Test fraction correct (NN-Score) = 0.75
Test fraction correct (NN-Accuracy) = 0.60

根据标准,Keras的准确度应为0.99。出了什么问题?

本月(2016年4月)刚刚发布的Keras版本1中,默认的纪元数从0版的100个减少到了10个。尝试:


你的神经网络很简单。尝试通过添加更多的神经元和层来创建深层神经网络。此外,缩放功能也很重要。尝试
glorot\u uniform
初始值设定项。最后但并非最不重要的是,增加历元,看看损失是否随着每个历元而减少

那么,给你:

model = Sequential()
model.add(Dense(input_dim=4, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=3, init='glorot_uniform'))
model.add(Activation('softmax'))
这在第120个纪元达到0.97左右

model = Sequential()
model.add(Dense(input_dim=4, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=512, init='glorot_uniform'))
model.add(PReLU(input_shape=(512,)))
model.add(BatchNormalization((512,)))
model.add(Dropout(0.5))

model.add(Dense(input_dim=512, output_dim=3, init='glorot_uniform'))
model.add(Activation('softmax'))