# tensolflowでmnistの学習　データの正規化について

そこで疑問なのですが,データを正規化させて重みにも1/√nをかけて実行したのですが正解率が正規化する前よりも下がってしまいまいした.その理由がわからないので教えていただきたいです.

なおこの学習で用いたモデルは隠れ層3層
ノード数全て200

この実装では正答率はだいたい70~80%でした.

``````import tensorflow as tf
import numpy as np
from sklearn.datasets import fetch_mldata
from sklearn.model_selection import train_test_split
from sklearn.utils import shuffle
mnist = fetch_mldata('MNIST original', data_home = '.')

class DNN(object):
def __init__(self, n_in, n_hiddens, n_out):
self.n_in = n_in
self.n_out = n_out
self.n_hiddens = n_hiddens
self.weight = []
self.bias = []

self._x = None
self._y = None
self._t = None
self._sess = None
self._keep_prob = None
self._history = {
'loss':[],
'accuracy':[]
}

def weight_variable(self,shape):
#initial = tf.truncated_normal(shape, stddev=0.01)
initial = np.sqrt(1.0 / shape[0]) * tf.truncated_normal(shape)
return tf.Variable(initial)

def bias_variable(self,shape):
initial = tf.zeros(shape)
return tf.Variable(initial)

def inference(self, x, keep_prob):
for i,n_hidden in enumerate(self.n_hiddens):
if i == 0:
input = x
input_dim = self.n_in

else:

input = output
input_dim = self.n_hiddens[i-1]

self.weight.append(self.weight_variable([input_dim, n_hidden]))
self.bias.append(self.bias_variable([n_hidden]))

h = tf.nn.relu(tf.matmul(input, self.weight[-1]) + self.bias[-1])
output = tf.nn.dropout(h, keep_prob)

self.weight.append(
self.bias_variable([self.n_hiddens[-1], self.n_out]))
self.bias.append(self.bias_variable([self.n_out]))

y = tf.nn.softmax(tf.matmul(
output, self.weight[-1]) + self.bias[-1])

return y

def loss(self, y, t):
cross_entropy = tf.reduce_mean(-tf.reduce_sum(t * tf.log(y),axis = 1))
return cross_entropy

def training(self,loss):
train_step = optimizer.minimize(loss)
return train_step

def accuracy(self,y,t):
correct_prediction = tf.equal(tf.argmax(y, 1), tf.argmax(t, 1))
accuracy = tf.reduce_mean(tf.cast(correct_prediction, tf.float32))
return accuracy

def fit(self, X_train, Y_train,
nb_epoch=100, batch_size=100, p_keep=0.5):

x = tf.placeholder(tf.float32, shape = [None, self.n_in])
t = tf.placeholder(tf.float32, shape = [None, self.n_out])
keep_prob = tf.placeholder(tf.float32)

self._x = x
self._t = t
self._keep_prob = keep_prob

y = self.inference(x, keep_prob)
loss = self.loss(y, t)
train_step = self.training(loss)
accuracy = self.accuracy(y, t)

init = tf.global_variables_initializer()
sess = tf.Session()
sess.run(init)

self._sess = sess
self._y = y

for epoch in range(nb_epoch):
X_, Y_ = shuffle(X_train,Y_train)

for i in range(len(X_train) // batch_size):

start = i * batch_size
end = start + batch_size

sess.run(train_step, feed_dict = {
x:X_[start:end],
t:Y_[start:end],
keep_prob:p_keep
})

loss_ = loss.eval(session = self._sess, feed_dict = {
x:X_train,
t:Y_train,
keep_prob:1.0
})

accuracy_ = accuracy.eval(session = self._sess, feed_dict = {
x:X_train,
t:Y_train,
keep_prob:1.0
})

self._history['loss'].append(loss_)
self._history['accuracy'].append(accuracy_)

print('epoch:', epoch,
' loss:', loss_,
' accuracy:', accuracy_)

return self._history

def evaluate(self, X_test, Y_test):
accuracy = self.accuracy(self._y,self._t)
return accuracy.eval(session = self._sess, feed_dict = {
self._x:X_test,
self._t:Y_test,
self._keep_prob:1.0
})

if __name__ == '__main__':

n = len(mnist.data)
N = 10000  # MNISTの一部を使う
indices = np.random.permutation(range(n))[:N]  # ランダムにN枚を選択

X = mnist.data[indices]
#X = X / X.max()
#X = X - X.mean(axis = 1).reshape(len(X),1)

X = X / 255.0
X = X - X.mean(axis=1).reshape(len(X), 1)

y = mnist.target[indices]
Y = np.eye(10)[y.astype(int)]  # 1-of-K 表現に変換

X_train, X_test, Y_train, Y_test = train_test_split(X, Y, train_size=0.8)

'''
モデル設定
'''

model = DNN(n_in=len(X[0]),
n_hiddens=[200, 200, 200],
n_out=len(Y[0]))

'''
モデル学習
'''
model.fit(X_train, Y_train,
nb_epoch=50,
batch_size=200,
p_keep=0.5)

'''
予測精度の評価
'''
accuracy = model.evaluate(X_test, Y_test)
print('accuracy: ', accuracy)
``````

ご教示のほどよろしくお願いいたします.

• 正規化することにより入力される信号の絶対値が小さくなる.重みも小さくなることで,誤差逆伝播するときに勾配が正規化したため小さくなってしまっていることが考えられると思います.そのため学習が進みづらくなってしまっていると考えましたがこの考え方でよろしいでしょうか？
– user31609
Commented 2019年1月3日 2:02
• ノイズを加えたから問題が難しくなったのだと思いました。 Commented 2019年1月4日 0:34