• tensorflow实现Word2vec


    # coding: utf-8
    '''
    Note: Step 3 is missing. That's why I left it.
    '''
    
    from __future__ import absolute_import
    from __future__ import print_function
    
    import collections
    import math
    import numpy as np
    import os
    import random
    from six.moves import urllib
    from six.moves import xrange  # pylint: disable=redefined-builtin
    import tensorflow as tf
    import zipfile
    
    # Step 1: Download the data.
    # Downloading data. If the file already exists, check that it was received correctly (the file size is the same).
    # Return filename after download.
    print("Step 1: Download the data.")
    url = 'http://mattmahoney.net/dc/'
    
    def maybe_download(filename, expected_bytes):
        """Download a file if not present, and make sure it's the right size."""
        if not os.path.exists(filename):
            filename, _ = urllib.request.urlretrieve(url + filename, filename)
        statinfo = os.stat(filename)
        if statinfo.st_size == expected_bytes:
            print('Found and verified', filename)
        else:
            print(statinfo.st_size)
            raise Exception('Failed to verify ' + filename + '. Can you get to it with a browser?')
        return filename
    
    filename = maybe_download('text8.zip', 31344016)
    
    
    # Read the data into a string.
    # file (zipfile) 을 읽어옴
    # text8.zip contains only one file. Looking at the code, it seems to be words separated by ''.
    def read_data(filename):
        f = zipfile.ZipFile(filename)
        for name in f.namelist():
            return f.read(name).split()
        f.close()
    
    words = read_data(filename)
    print('Data size', len(words))
    print('Sample words: ', words[:10])
    
    # Step 2: Build the dictionary and replace rare words with UNK token.
    print("
    Step 2: Build the dictionary and replace rare words with UNK token.")
    vocabulary_size = 50000
    
    def build_dataset(words):
    #vocabulary_size is the number of frequent words to use.
    #all words that do not fit within the top 50000 (vocabulary_size) are treated as UNK.
    #Param words: literally a list of words
    #Return data: indices of words including UNK. That is, words index list.
    #Return count: collections.Counter which counts the frequency of occurrence of each word
    #:return dictionary: {"word": "index"}
    #:return reverse_dictionary: {"index": "word"}. e.g.) {0: 'UNK', 1: 'the', ...}
        count = [['UNK', -1]]
        count.extend(collections.Counter(words).most_common(vocabulary_size - 1))
        dictionary = dict()
        for word, _ in count:
            dictionary[word] = len(dictionary) # insert index to dictionary (len이 계속 증가하므로 결과적으로 index의 효과)
        data = list()
        unk_count = 0
        for word in words:
           if word in dictionary:
              index = dictionary[word]
           else:
              index = 0  # dictionary['UNK']
        unk_count = unk_count + 1
        data.append(index]
        count[0][1] = unk_count
        reverse_dictionary = dict(zip(dictionary.values(), dictionary.keys()))
        return data, count, dictionary, reverse_dictionary
    
    data, count, dictionary, reverse_dictionary = build_dataset(words)
    del words  # Hint to reduce memory.
    print('Most common words (+UNK)', count[:5])
    print('Sample data: ', data[:10])
    print('Sample count: ', count[:10])
    print('Sample dict: ', dictionary.items()[:10])
    print('Sample reverse dict: ', reverse_dictionary.items()[:10])
    
    data_index = 0
    
    
    # Step 4: Function to generate a training batch for the skip-gram model.
    print("
    Step 4: Function to generate a training batch for the skip-gram model.")
    def generate_batch(batch_size, num_skips, skip_window):
    
    #Function to generate minibatch.
    #Data_index is declared as global, which acts as static here. That is, the value of data_index is retained even if this function is continually recalled.
    #Param batch_size: batch_size.
    #Param num_skips: how many (target, context) pairs to generate in the context window.
    #Param skip_window: context window size. The skip-gram model predicts the surrounding words from the target word, and skip_window defines the range of the surrounding words.
    #Return batch: mini-batch of data.
    #Return labels: labels of mini-batch. 2d array of [batch_size] [1].
    
        global data_index
        assert batch_size % num_skips == 0  # num_skips의 배수로 batch가 생성되므로.
        assert num_skips <= 2 * skip_window # num_skips == 2*skip_window 이면 모든 context window의 context에 대해 pair가 생성된다.
        # That is, it should not be larger than that.
        batch = np.ndarray(shape=(batch_size), dtype=np.int32)
        labels = np.ndarray(shape=(batch_size, 1), dtype=np.int32)
        span = 2 * skip_window + 1 # [ skip_window target skip_window ]
        buffer = collections.deque(maxlen=span)
        # Deques are a generalization of stacks and queues.
        # The name is pronounced "deck" and is short for "double-ended queue".
        # You can both push (append) & pop both sides.
        # buffer = data[data_index:data_index+span] with circling
        for _ in range(span):
            buffer.append(data[data_index])
            data_index = (data_index + 1) % len(data)
    
    # operator to discard the remainder or decimal point
    #Skip-gram is a model for predicting surrounding context words from target words.
    #Before we learn skip-gram model, we need to convert words to (target, context) type.
    #The code below will do the job with batch_size size.
    
        for i in range(batch_size // num_skips):
            target = skip_window  # target label at the center of the buffer
            targets_to_avoid = [ skip_window ]
            for j in range(num_skips):
                while target in targets_to_avoid:
                    # Extracting the context from the context window is done randomly.
                    # However, if skip_window * 2 == num_skips, all contexts are taken out, so random is not meaningful. The order is random only.
                    target = random.randint(0, span - 1)
    
                targets_to_avoid.append(target)
                batch[i * num_skips + j] = buffer[skip_window]
                labels[i * num_skips + j, 0] = buffer[target]
    
            buffer.append(data[data_index])
            data_index = (data_index + 1) % len(data)
    
        return batch, labels
    
    # To see how the batch is configured, output it once:
    print("Generating batch ... ")
    batch, labels = generate_batch(batch_size=8, num_skips=2, skip_window=1)
    print("Sample batches: ", batch[:10])
    print("Sample labels: ", labels[:10])
    for i in range(8):
        print(batch[i], '->', labels[i, 0])
        print(reverse_dictionary[batch[i]], '->', reverse_dictionary[labels[i, 0]])
    
    
    # Step 5: Build and train a skip-gram model.
    print("
    Step 5: Build and train a skip-gram model.")
    batch_size = 128
    embedding_size = 128  # Dimension of the embedding vector.
    skip_window = 1       # How many words to consider left and right.
    num_skips = 2         # How many times to reuse an input to generate a label.
    
    # We pick a random validation set to sample nearest neighbors. Here we limit the
    # validation samples to the words that have a low numeric ID, which by
    # construction are also the most frequent.
    valid_size = 16     # Random set of words to evaluate similarity on.
    valid_window = 100  # Only pick dev samples in the head of the distribution.
    valid_examples = np.array(random.sample(np.arange(valid_window), valid_size))
    # [0 ~ valid_window] And then sampled by valid_size.
    # In other words, valid_examples is a random selection of 16 from 0 to 99.
    num_sampled = 64    # Number of negative examples to sample.
    
    print("valid_examples: ", valid_examples)
    
    graph = tf.Graph()
    
    with graph.as_default():
    
        # Input data.
        train_inputs = tf.placeholder(tf.int32, shape=[batch_size])
        train_labels = tf.placeholder(tf.int32, shape=[batch_size, 1])
        valid_dataset = tf.constant(valid_examples, dtype=tf.int32)
    
        # Ops and variables pinned to the CPU because of missing GPU implementation
        # Embedding_lookup This GPU implementation is not implemented, so it must be a CPU.
        # Since default is GPU, it explicitly specifies CPU.
        with tf.device('/cpu:0'):
            # Look up embeddings for inputs.
            # embedding matrix (vectors)
            embeddings = tf.Variable(tf.random_uniform([vocabulary_size, embedding_size], -1.0, 1.0))
            # Only the embedding vectors pointed to by train_inputs (mini-batch; indices) in the entire embedding matrix are extracted
            embed = tf.nn.embedding_lookup(embeddings, train_inputs)
    
            # Construct the variables for the NCE loss
            # NCE loss is defined using a logistic regression model.
            # That is, for logistic regression, weight and bias are needed for each word of vocabulary.
            nce_weights = tf.Variable(
                tf.truncated_normal([vocabulary_size, embedding_size],
                                    stddev=1.0 / math.sqrt(embedding_size)))
            nce_biases = tf.Variable(tf.zeros([vocabulary_size]))
    
        # Compute the average NCE loss for the batch.
        # tf.nce_loss automatically draws a new sample of the negative labels each
        # time we evaluate the loss.
        loss = tf.reduce_mean(
            tf.nn.nce_loss(nce_weights, nce_biases, embed, train_labels,
                           num_sampled, vocabulary_size))
    
        # Construct the SGD optimizer using a learning rate of 1.0.
        optimizer = tf.train.GradientDescentOptimizer(1.0).minimize(loss)
    
        # Compute the cosine similarity between minibatch examples and all embeddings.
        # Calculate the cosine similarity between minibatch (valid_embeddings) and all embeddings.
        # This process is to show which words are closest to each valid_example as the learning progresses (ie to show the learning process).
        norm = tf.sqrt(tf.reduce_sum(tf.square(embeddings), 1, keep_dims=True))
        normalized_embeddings = embeddings / norm
        valid_embeddings = tf.nn.embedding_lookup(normalized_embeddings, valid_dataset)
        similarity = tf.matmul(valid_embeddings, normalized_embeddings, transpose_b=True)
    
    # Step 6: Begin training
    print("
    Step 6: Begin training")
    num_steps = 100001
    
    with tf.Session(graph=graph) as session:
        # We must initialize all variables before we use them.
        tf.initialize_all_variables().run()
        print("Initialized")
    
        average_loss = 0
        for step in xrange(num_steps):
            batch_inputs, batch_labels = generate_batch(batch_size, num_skips, skip_window)
            feed_dict = {train_inputs : batch_inputs, train_labels : batch_labels}
    
            # We perform one update step by evaluating the optimizer op (including it
            # in the list of returned values for session.run()
            # Use feed_dict to put data into the placeholder and learn it.
            _, loss_val = session.run([optimizer, loss], feed_dict=feed_dict)
            average_loss += loss_val
    
            if step % 2000 == 0:
                if step > 0:
                    average_loss = average_loss / 2000
                # The average loss is an estimate of the loss over the last 2000 batches.
                print("Average loss at step ", step, ": ", average_loss)
                average_loss = 0
    
            # note that this is expensive (~20% slowdown if computed every 500 steps)
            if step % 10000 == 0:
                sim = similarity.eval()
                for i in xrange(valid_size):
                    valid_word = reverse_dictionary[valid_examples[i]]
                    top_k = 8 # number of nearest neighbors
                    nearest = (-sim[i, :]).argsort()[1:top_k+1]
                    log_str = "Nearest to %s:" % valid_word
                    for k in xrange(top_k):
                        close_word = reverse_dictionary[nearest[k]]
                        log_str = "%s %s," % (log_str, close_word)
                    print(log_str)
        final_embeddings = normalized_embeddings.eval()
    
    # Step 7: Visualize the embeddings.
    print("
    Step 7: Visualize the embeddings.")
    def plot_with_labels(low_dim_embs, labels, filename='tsne.png'):
        assert low_dim_embs.shape[0] >= len(labels), "More labels than embeddings"
        plt.figure(figsize=(18, 18))  #in inches
        for i, label in enumerate(labels):
            x, y = low_dim_embs[i,:]
            plt.scatter(x, y)
            plt.annotate(label,
                         xy=(x, y),
                         xytext=(5, 2),
                         textcoords='offset points',
                         ha='right',
                         va='bottom')
    
        plt.savefig(filename)
    
    try:
        # If you get an error here, update scikit-learn and matplotlib to the latest version.
        from sklearn.manifold import TSNE
        import matplotlib.pyplot as plt
    
        tsne = TSNE(perplexity=30, n_components=2, init='pca', n_iter=5000)
        plot_only = 500
    
        low_dim_embs = tsne.fit_transform(final_embeddings[:plot_only,:])
        labels = [reverse_dictionary[i] for i in xrange(plot_only)]
        plot_with_labels(low_dim_embs, labels)
    
    except ImportError:
        print("Please install sklearn and matplotlib to visualize embeddings.")
      
  • 相关阅读:
    MySQL执行外部sql脚本文件的命令
    如何修改mysql 默认引擎为InnoDB?
    最新版的 vscode 怎么配置 Python?
    Go 后端主要做什么
    Go 语言 fmt.Sprintf (格式化输出)
    什么是弱类型语言、强类型语言?
    一个项目从立项到发布的流程
    工厂模式
    观察模式
    类之间的关系
  • 原文地址:https://www.cnblogs.com/amazement/p/7100100.html
Copyright © 2020-2023  润新知