欧美bbbwbbbw肥妇,免费乱码人妻系列日韩,一级黄片

詳解python實現(xiàn)識別手寫MNIST數(shù)字集的程序

 更新時間:2018年08月03日 14:12:12   作者:Mrchesian  
這篇文章主要介紹了詳解python實現(xiàn)識別手寫MNIST數(shù)字集的程序,小編覺得挺不錯的,現(xiàn)在分享給大家,也給大家做個參考。一起跟隨小編過來看看吧

我們需要做的第⼀件事情是獲取 MNIST 數(shù)據(jù)。如果你是⼀個 git ⽤⼾,那么你能夠通過克隆這本書的代碼倉庫獲得數(shù)據(jù),實現(xiàn)我們的⽹絡來分類數(shù)字

git clone https://github.com/mnielsen/neural-networks-and-deep-learning.git
class Network(object):
def __init__(self, sizes):
self.num_layers = len(sizes)
self.sizes = sizes
self.biases = [np.random.randn(y, 1) for y in sizes[1:]]
self.weights = [np.random.randn(y, x)
for x, y in zip(sizes[:-1], sizes[1:])]

在這段代碼中,列表 sizes 包含各層神經元的數(shù)量。例如,如果我們想創(chuàng)建⼀個在第⼀層有2 個神經元,第⼆層有 3 個神經元,最后層有 1 個神經元的 Network 對象,我們應這樣寫代碼:

net = Network([2, 3, 1])

Network 對象中的偏置和權重都是被隨機初始化的,使⽤ Numpy 的 np.random.randn 函數(shù)來⽣成均值為 0,標準差為 1 的⾼斯分布。這樣的隨機初始化給了我們的隨機梯度下降算法⼀個起點。在后⾯的章節(jié)中我們將會發(fā)現(xiàn)更好的初始化權重和偏置的⽅法,但是⽬前隨機地將其初始化。注意 Network 初始化代碼假設第⼀層神經元是⼀個輸⼊層,并對這些神經元不設置任何偏置,因為偏置僅在后⾯的層中⽤于計算輸出。有了這些,很容易寫出從⼀個 Network 實例計算輸出的代碼。我們從定義 S 型函數(shù)開始:

def sigmoid(z):
return 1.0/(1.0+np.exp(-z))

注意,當輸⼊ z 是⼀個向量或者 Numpy 數(shù)組時,Numpy ⾃動地按元素應⽤ sigmoid 函數(shù),即以向量形式。

我們然后對 Network 類添加⼀個 feedforward ⽅法,對于⽹絡給定⼀個輸⼊ a,返回對應的輸出 6 。這個⽅法所做的是對每⼀層應⽤⽅程 (22):

def feedforward(self, a):
"""Return the output of the network if "a" is input."""
for b, w in zip(self.biases, self.weights):
a = sigmoid(np.dot(w, a)+b)
return a

當然,我們想要 Network 對象做的主要事情是學習。為此我們給它們⼀個實現(xiàn)隨即梯度下降算法的 SGD ⽅法。代碼如下。其中⼀些地⽅看似有⼀點神秘,我會在代碼后⾯逐個分析

def SGD(self, training_data, epochs, mini_batch_size, eta,
test_data=None):
"""Train the neural network using mini-batch stochastic
gradient descent. The "training_data" is a list of tuples
"(x, y)" representing the training inputs and the desired
outputs. The other non-optional parameters are
self-explanatory. If "test_data" is provided then the
network will be evaluated against the test data after each
epoch, and partial progress printed out. This is useful for
tracking progress, but slows things down substantially."""
if test_data: n_test = len(test_data)
n = len(training_data)
for j in xrange(epochs):
random.shuffle(training_data)
mini_batches = [
training_data[k:k+mini_batch_size]
for k in xrange(0, n, mini_batch_size)]
for mini_batch in mini_batches:
self.update_mini_batch(mini_batch, eta)
if test_data:
print "Epoch {0}: {1} / {2}".format(
j, self.evaluate(test_data), n_test)
else:
print "Epoch {0} complete".format(j)
 

training_data 是⼀個 (x, y) 元組的列表,表⽰訓練輸⼊和其對應的期望輸出。變量 epochs 和mini_batch_size 正如你預料的——迭代期數(shù)量,和采樣時的⼩批量數(shù)據(jù)的⼤⼩。 eta 是學習速率,η。如果給出了可選參數(shù) test_data ,那么程序會在每個訓練器后評估⽹絡,并打印出部分進展。這對于追蹤進度很有⽤,但相當拖慢執(zhí)⾏速度。

在每個迭代期,它⾸先隨機地將訓練數(shù)據(jù)打亂,然后將它分成多個適當⼤⼩的⼩批量數(shù)據(jù)。這是⼀個簡單的從訓練數(shù)據(jù)的隨機采樣⽅法。然后對于每⼀個 mini_batch我們應⽤⼀次梯度下降。這是通過代碼 self.update_mini_batch(mini_batch, eta) 完成的,它僅僅使⽤ mini_batch 中的訓練數(shù)據(jù),根據(jù)單次梯度下降的迭代更新⽹絡的權重和偏置。這是update_mini_batch ⽅法的代碼:

def update_mini_batch(self, mini_batch, eta):
"""Update the network's weights and biases by applying
gradient descent using backpropagation to a single mini batch.
The "mini_batch" is a list of tuples "(x, y)", and "eta"
is the learning rate."""
nabla_b = [np.zeros(b.shape) for b in self.biases]
nabla_w = [np.zeros(w.shape) for w in self.weights]
for x, y in mini_batch:
delta_nabla_b, delta_nabla_w = self.backprop(x, y)
nabla_b = [nb+dnb for nb, dnb in zip(nabla_b, delta_nabla_b)]
nabla_w = [nw+dnw for nw, dnw in zip(nabla_w, delta_nabla_w)]
self.weights = [w-(eta/len(mini_batch))*nw
for w, nw in zip(self.weights, nabla_w)]
self.biases = [b-(eta/len(mini_batch))*nb
for b, nb in zip(self.biases, nabla_b)]

⼤部分⼯作由這⾏代碼完成:

delta_nabla_b, delta_nabla_w = self.backprop(x, y)

這⾏調⽤了⼀個稱為反向傳播的算法,⼀種快速計算代價函數(shù)的梯度的⽅法。因此update_mini_batch 的⼯作僅僅是對 mini_batch 中的每⼀個訓練樣本計算梯度,然后適當?shù)馗?self.weights 和 self.biases 。我現(xiàn)在不會列出 self.backprop 的代碼。我們將在下章中學習反向傳播是怎樣⼯作的,包括self.backprop 的代碼。現(xiàn)在,就假設它按照我們要求的⼯作,返回與訓練樣本 x 相關代價的適當梯度

完整的程序

"""
network.py
~~~~~~~~~~
 
A module to implement the stochastic gradient descent learning
algorithm for a feedforward neural network. Gradients are calculated
using backpropagation. Note that I have focused on making the code
simple, easily readable, and easily modifiable. It is not optimized,
and omits many desirable features.
"""
 
#### Libraries
# Standard library
import random
 
# Third-party libraries
import numpy as np
 
class Network(object):
 
 def __init__(self, sizes):
  """The list ``sizes`` contains the number of neurons in the
  respective layers of the network. For example, if the list
  was [2, 3, 1] then it would be a three-layer network, with the
  first layer containing 2 neurons, the second layer 3 neurons,
  and the third layer 1 neuron. The biases and weights for the
  network are initialized randomly, using a Gaussian
  distribution with mean 0, and variance 1. Note that the first
  layer is assumed to be an input layer, and by convention we
  won't set any biases for those neurons, since biases are only
  ever used in computing the outputs from later layers."""
  self.num_layers = len(sizes)
  self.sizes = sizes
  self.biases = [np.random.randn(y, 1) for y in sizes[1:]]
  self.weights = [np.random.randn(y, x)
      for x, y in zip(sizes[:-1], sizes[1:])]
 
 def feedforward(self, a):
  """Return the output of the network if ``a`` is input."""
  for b, w in zip(self.biases, self.weights):
   a = sigmoid(np.dot(w, a)+b)
  return a
 
 def SGD(self, training_data, epochs, mini_batch_size, eta,
   test_data=None):
  """Train the neural network using mini-batch stochastic
  gradient descent. The ``training_data`` is a list of tuples
  ``(x, y)`` representing the training inputs and the desired
  outputs. The other non-optional parameters are
  self-explanatory. If ``test_data`` is provided then the
  network will be evaluated against the test data after each
  epoch, and partial progress printed out. This is useful for
  tracking progress, but slows things down substantially."""
  if test_data: n_test = len(test_data)
  n = len(training_data)
  for j in xrange(epochs):
   random.shuffle(training_data)
   mini_batches = [
    training_data[k:k+mini_batch_size]
    for k in xrange(0, n, mini_batch_size)]
   for mini_batch in mini_batches:
    self.update_mini_batch(mini_batch, eta)
   if test_data:
    print "Epoch {0}: {1} / {2}".format(
     j, self.evaluate(test_data), n_test)
   else:
    print "Epoch {0} complete".format(j)
 
 def update_mini_batch(self, mini_batch, eta):
  """Update the network's weights and biases by applying
  gradient descent using backpropagation to a single mini batch.
  The ``mini_batch`` is a list of tuples ``(x, y)``, and ``eta``
  is the learning rate."""
  nabla_b = [np.zeros(b.shape) for b in self.biases]
  nabla_w = [np.zeros(w.shape) for w in self.weights]
  for x, y in mini_batch:
   delta_nabla_b, delta_nabla_w = self.backprop(x, y)
   nabla_b = [nb+dnb for nb, dnb in zip(nabla_b, delta_nabla_b)]
   nabla_w = [nw+dnw for nw, dnw in zip(nabla_w, delta_nabla_w)]
  self.weights = [w-(eta/len(mini_batch))*nw
      for w, nw in zip(self.weights, nabla_w)]
  self.biases = [b-(eta/len(mini_batch))*nb
      for b, nb in zip(self.biases, nabla_b)]
 
 def backprop(self, x, y):
  """Return a tuple ``(nabla_b, nabla_w)`` representing the
  gradient for the cost function C_x. ``nabla_b`` and
  ``nabla_w`` are layer-by-layer lists of numpy arrays, similar
  to ``self.biases`` and ``self.weights``."""
  nabla_b = [np.zeros(b.shape) for b in self.biases]
  nabla_w = [np.zeros(w.shape) for w in self.weights]
  # feedforward
  activation = x
  activations = [x] # list to store all the activations, layer by layer
  zs = [] # list to store all the z vectors, layer by layer
  for b, w in zip(self.biases, self.weights):
   z = np.dot(w, activation)+b
   zs.append(z)
   activation = sigmoid(z)
   activations.append(activation)
  # backward pass
  delta = self.cost_derivative(activations[-1], y) * \
   sigmoid_prime(zs[-1])
  nabla_b[-1] = delta
  nabla_w[-1] = np.dot(delta, activations[-2].transpose())
  # Note that the variable l in the loop below is used a little
  # differently to the notation in Chapter 2 of the book. Here,
  # l = 1 means the last layer of neurons, l = 2 is the
  # second-last layer, and so on. It's a renumbering of the
  # scheme in the book, used here to take advantage of the fact
  # that Python can use negative indices in lists.
  for l in xrange(2, self.num_layers):
   z = zs[-l]
   sp = sigmoid_prime(z)
   delta = np.dot(self.weights[-l+1].transpose(), delta) * sp
   nabla_b[-l] = delta
   nabla_w[-l] = np.dot(delta, activations[-l-1].transpose())
  return (nabla_b, nabla_w)
 
 def evaluate(self, test_data):
  """Return the number of test inputs for which the neural
  network outputs the correct result. Note that the neural
  network's output is assumed to be the index of whichever
  neuron in the final layer has the highest activation."""
  test_results = [(np.argmax(self.feedforward(x)), y)
      for (x, y) in test_data]
  return sum(int(x == y) for (x, y) in test_results)
 
 def cost_derivative(self, output_activations, y):
  """Return the vector of partial derivatives \partial C_x /
  \partial a for the output activations."""
  return (output_activations-y)
 
#### Miscellaneous functions
def sigmoid(z):
 """The sigmoid function."""
 return 1.0/(1.0+np.exp(-z))
 
def sigmoid_prime(z):
 """Derivative of the sigmoid function."""
 return sigmoid(z)*(1-sigmoid(z))

"""
mnist_loader
~~~~~~~~~~~~
 
A library to load the MNIST image data. For details of the data
structures that are returned, see the doc strings for ``load_data``
and ``load_data_wrapper``. In practice, ``load_data_wrapper`` is the
function usually called by our neural network code.
"""
 
#### Libraries
# Standard library
import cPickle
import gzip
 
# Third-party libraries
import numpy as np
 
def load_data():
 """Return the MNIST data as a tuple containing the training data,
 the validation data, and the test data.
 
 The ``training_data`` is returned as a tuple with two entries.
 The first entry contains the actual training images. This is a
 numpy ndarray with 50,000 entries. Each entry is, in turn, a
 numpy ndarray with 784 values, representing the 28 * 28 = 784
 pixels in a single MNIST image.
 
 The second entry in the ``training_data`` tuple is a numpy ndarray
 containing 50,000 entries. Those entries are just the digit
 values (0...9) for the corresponding images contained in the first
 entry of the tuple.
 
 The ``validation_data`` and ``test_data`` are similar, except
 each contains only 10,000 images.
 
 This is a nice data format, but for use in neural networks it's
 helpful to modify the format of the ``training_data`` a little.
 That's done in the wrapper function ``load_data_wrapper()``, see
 below.
 """
 f = gzip.open('../data/mnist.pkl.gz', 'rb')
 training_data, validation_data, test_data = cPickle.load(f)
 f.close()
 return (training_data, validation_data, test_data)
 
def load_data_wrapper():
 """Return a tuple containing ``(training_data, validation_data,
 test_data)``. Based on ``load_data``, but the format is more
 convenient for use in our implementation of neural networks.
 
 In particular, ``training_data`` is a list containing 50,000
 2-tuples ``(x, y)``. ``x`` is a 784-dimensional numpy.ndarray
 containing the input image. ``y`` is a 10-dimensional
 numpy.ndarray representing the unit vector corresponding to the
 correct digit for ``x``.
 
 ``validation_data`` and ``test_data`` are lists containing 10,000
 2-tuples ``(x, y)``. In each case, ``x`` is a 784-dimensional
 numpy.ndarry containing the input image, and ``y`` is the
 corresponding classification, i.e., the digit values (integers)
 corresponding to ``x``.
 
 Obviously, this means we're using slightly different formats for
 the training data and the validation / test data. These formats
 turn out to be the most convenient for use in our neural network
 code."""
 tr_d, va_d, te_d = load_data()
 training_inputs = [np.reshape(x, (784, 1)) for x in tr_d[0]]
 training_results = [vectorized_result(y) for y in tr_d[1]]
 training_data = zip(training_inputs, training_results)
 validation_inputs = [np.reshape(x, (784, 1)) for x in va_d[0]]
 validation_data = zip(validation_inputs, va_d[1])
 test_inputs = [np.reshape(x, (784, 1)) for x in te_d[0]]
 test_data = zip(test_inputs, te_d[1])
 return (training_data, validation_data, test_data)
 
def vectorized_result(j):
 """Return a 10-dimensional unit vector with a 1.0 in the jth
 position and zeroes elsewhere. This is used to convert a digit
 (0...9) into a corresponding desired output from the neural
 network."""
 e = np.zeros((10, 1))
 e[j] = 1.0
 return e
# test network.py "cost function square func"
import mnist_loader
training_data, validation_data, test_data = mnist_loader.load_data_wrapper()
import network
net = network.Network([784, 10])
net.SGD(training_data, 5, 10, 5.0, test_data=test_data)

原英文查看:http://neuralnetworksanddeeplearning.com/chap1.html

以上就是本文的全部內容,希望對大家的學習有所幫助,也希望大家多多支持腳本之家。

相關文章

  • 詳解pandas如何去掉、過濾數(shù)據(jù)集中的某些值或者某些行?

    詳解pandas如何去掉、過濾數(shù)據(jù)集中的某些值或者某些行?

    這篇文章主要介紹了pandas如何去掉、過濾數(shù)據(jù)集中的某些值或者某些行?,文中通過示例代碼介紹的非常詳細,對大家的學習或者工作具有一定的參考學習價值,需要的朋友們下面隨著小編來一起學習學習吧
    2019-05-05
  • 讓Python更加充分的使用Sqlite3

    讓Python更加充分的使用Sqlite3

    這篇文章主要為大家詳細介紹了Python更加充分的使用Sqlite3的方法,具有一定的參考價值,感興趣的小伙伴們可以參考一下
    2017-12-12
  • 詳解django中url路由配置及渲染方式

    詳解django中url路由配置及渲染方式

    這篇文章主要介紹了詳解django中url路由配置及渲染方式,小編覺得挺不錯的,現(xiàn)在分享給大家,也給大家做個參考。一起跟隨小編過來看看吧
    2019-02-02
  • 如何用Python寫一個簡單的通訊錄

    如何用Python寫一個簡單的通訊錄

    這篇文章主要介紹了如何用Python寫一個簡單的通訊錄,對著幾串代碼感興趣的朋友一起來看看吧
    2021-08-08
  • python GUI庫圖形界面開發(fā)之PyQt5滑塊條控件QSlider詳細使用方法與實例

    python GUI庫圖形界面開發(fā)之PyQt5滑塊條控件QSlider詳細使用方法與實例

    這篇文章主要介紹了python GUI庫圖形界面開發(fā)之PyQt5滑塊條控件QSlider詳細使用方法與實例,需要的朋友可以參考下
    2020-02-02
  • python-parser.parse_args()解析參數(shù)問題

    python-parser.parse_args()解析參數(shù)問題

    這篇文章主要介紹了python-parser.parse_args()解析參數(shù)問題,具有很好的參考價值,希望對大家有所幫助,如有錯誤或未考慮完全的地方,望不吝賜教
    2023-08-08
  • Python實現(xiàn)內存泄露排查的示例詳解

    Python實現(xiàn)內存泄露排查的示例詳解

    一般在python代碼塊的調試過程中會使用memory-profiler、filprofiler、objgraph等三種方式進行輔助分析,今天這里主要介紹使用objgraph對象提供的函數(shù)接口來進行內存泄露的分析,感興趣的可以了解一下
    2023-01-01
  • 3個 Python 編程技巧

    3個 Python 編程技巧

    這篇文章主要介紹 Python 編程技巧,我們知道,字典的本質是哈希表,本身是無法排序的,但 Python 3.6 之后,字典是可以按照插入的順序進行遍歷的,這就是有序字典,其中的原理,可以閱讀為什么 Python3.6 之后字典是有序的。本文也會介紹該內容,需要的朋友可以參考一下
    2021-10-10
  • python3實現(xiàn)微型的web服務器

    python3實現(xiàn)微型的web服務器

    這篇文章主要為大家詳細介紹了python3實現(xiàn)一個微型的web服務器,具有一定的參考價值,感興趣的小伙伴們可以參考一下
    2019-09-09
  • Pycharm快速安裝OpenCV的詳細操作步驟

    Pycharm快速安裝OpenCV的詳細操作步驟

    Pycharm中使用OpenCV,其實也就是用Python語言調用OpenCV,下面這篇文章主要給大家介紹了關于Pycharm快速安裝OpenCV的詳細操作步驟,文中通過圖文介紹的非常詳細,需要的朋友可以參考下
    2022-07-07

最新評論