GCN代码分析 2019.03.12 22:34:54字数 560阅读 5714 本文主要对GCN源码进行分析。

GCN代码分析

 

1 代码结构

.
├── data      // 图数据
├── inits    // 初始化的一些公用函数
├── layers     // GCN层的定义
├── metrics    // 评测指标的计算
├── models     // 模型结构定义
├── train    // 训练
└── utils    //  工具函数的定义

utils.py

def parse_index_file(filename) # 处理index文件并返回index矩阵

def sample_mask(idx, l) #创建 mask 并返回mask矩阵

def load_data(dataset_str) # 读取数据

  • 从gcn/data文件夹下读取数据,文件包括有:

  • ind.dataset_str.x => 训练实例的特征向量,如scipy.sparse.csr.csr_matrix类的实例

  • ind.dataset_str.tx => 测试实例的特征向量,如scipy.sparse.csr.csr_matrix类的实例

  • ind.dataset_str.allx => 有标签的+无无标签训练实例的特征向量,是ind.dataset_str.x的超集

  • ind.dataset_str.y => 训练实例的标签,独热编码,numpy.ndarray类的实例

  • ind.dataset_str.ty => 测试实例的标签,独热编码,numpy.ndarray类的实例

  • ind.dataset_str.ally => 有标签的+无无标签训练实例的标签,独热编码,numpy.ndarray类的实例

  • ind.dataset_str.graph => 图数据,collections.defaultdict类的实例,格式为 {index:[index_of_neighbor_nodes]}

  • ind.dataset_str.test.index => 测试实例的id

​ 上述文件必须都用python的pickle模块存储

  • 返回: adj, features, y_train, y_val, y_test, train_mask, val_mask, test_mask

def sparse_to_tuple(sparse_mx) # 将矩阵转换成tuple格式并返回

def preprocess_features(features) # 处理特征:将特征进行归一化并返回tuple (coords, values, shape)

def normalize_adj(adj) # 图归一化并返回

def preprocess_adj(adj) # 处理得到GCN中的归一化矩阵并返回

def construct_feed_dict(features, support, labels, labels_mask, placeholders) # 构建输入字典并返回

def chebyshev_polynomials(adj, k) # 切比雪夫多项式近似:计算K阶的切比雪夫近似矩阵

def chebyshev_polynomials(adj, k):
    """Calculate Chebyshev polynomials up to order k. Return a list of sparse matrices (tuple representation)."""
    print("Calculating Chebyshev polynomials up to order {}...".format(k))

    adj_normalized = normalize_adj(adj) # D^{-1/2}AD^{1/2}
    laplacian = sp.eye(adj.shape[0]) - adj_normalized  # L = I_N - D^{-1/2}AD^{1/2}
    largest_eigval, _ = eigsh(laplacian, 1, which='LM') # lambda_{max}
    scaled_laplacian = (2. / largest_eigval[0]) * laplacian - sp.eye(adj.shape[0]) # 2/lambda_{max}L-I_N

    # 将切比雪夫多项式的 T_0(x) = 1和 T_1(x) = x 项加入到t_k中
    t_k = list()
    t_k.append(sp.eye(adj.shape[0])) 
    t_k.append(scaled_laplacian)
    
    # 依据公式 T_n(x) = 2xT_n(x) - T_{n-1}(x) 构造递归程序,计算T_2 -> T_k项目
    def chebyshev_recurrence(t_k_minus_one, t_k_minus_two, scaled_lap):
        s_lap = sp.csr_matrix(scaled_lap, copy=True)
        return 2 * s_lap.dot(t_k_minus_one) - t_k_minus_two

    for i in range(2, k+1):
        t_k.append(chebyshev_recurrence(t_k[-1], t_k[-2], scaled_laplacian))

    return sparse_to_tuple(t_k)

layers.py

  • 各层定义的方式与keras类似

  • 定义基类 Layer

    属性:name (String) => 定义了变量范围;logging (Boolean) => 打开或关闭TensorFlow直方图日志记录

    方法:__init__()(初始化),_call()(定义计算),__call__()(调用_call()函数),_log_vars()

  • 定义Dense Layer类,继承自Layer类

  • 定义GraphConvolution类,继承自Layer类。重点来看一下这个类的实现。

class GraphConvolution(Layer):
    """Graph convolution layer."""
    def __init__(self, input_dim, output_dim, placeholders, dropout=0.,
                 sparse_inputs=False, act=tf.nn.relu, bias=False,
                 featureless=False, **kwargs):
        super(GraphConvolution, self).__init__(**kwargs)

        if dropout:
            self.dropout = placeholders['dropout']
        else:
            self.dropout = 0.

        self.act = act
        self.support = placeholders['support']
        self.sparse_inputs = sparse_inputs
        self.featureless = featureless
        self.bias = bias

        # helper variable for sparse dropout
        self.num_features_nonzero = placeholders['num_features_nonzero']
        
        # 下面是定义变量,主要是通过调用utils.py中的glorot函数实现
        with tf.variable_scope(self.name + '_vars'):
            for i in range(len(self.support)):
                self.vars['weights_' + str(i)] = glorot([input_dim, output_dim],
                                                        name='weights_' + str(i))
            if self.bias:
                self.vars['bias'] = zeros([output_dim], name='bias')

        if self.logging:
            self._log_vars()

    def _call(self, inputs):
        x = inputs

        # dropout 设置dropout
        if self.sparse_inputs:
            x = sparse_dropout(x, 1-self.dropout, self.num_features_nonzero)
        else:
            x = tf.nn.dropout(x, 1-self.dropout)

        # convolve 卷积的实现。主要是根据论文中公式Z = 	ilde{D}^{-1/2}	ilde{A}^{-1/2}X	heta实现
        supports = list()
        for i in range(len(self.support)):
            if not self.featureless:
                pre_sup = dot(x, self.vars['weights_' + str(i)],
                              sparse=self.sparse_inputs)
            else:
                pre_sup = self.vars['weights_' + str(i)]
            support = dot(self.support[i], pre_sup, sparse=True)
            supports.append(support)
        output = tf.add_n(supports)

        # bias
        if self.bias:
            output += self.vars['bias']

        return self.act(output)

model.py

定义了一个model基类,以及两个继承自model类的MLP、GCN类。重点来看看GCN类的定义

class GCN(Model):
    def __init__(self, placeholders, input_dim, **kwargs):
        super(GCN, self).__init__(**kwargs)

        self.inputs = placeholders['features']
        self.input_dim = input_dim
        # self.input_dim = self.inputs.get_shape().as_list()[1]  # To be supported in future Tensorflow versions
        self.output_dim = placeholders['labels'].get_shape().as_list()[1]
        self.placeholders = placeholders

        self.optimizer = tf.train.AdamOptimizer(learning_rate=FLAGS.learning_rate)

        self.build()
    
    # 损失计算
    def _loss(self):
        # Weight decay loss # 正则化项
        for var in self.layers[0].vars.values():
            self.loss += FLAGS.weight_decay * tf.nn.l2_loss(var)

        # Cross entropy error # 交叉熵损失函数
        self.loss += masked_softmax_cross_entropy(self.outputs, self.placeholders['labels'],
                                                  self.placeholders['labels_mask'])
    # 计算模型准确度
    def _accuracy(self):
        self.accuracy = masked_accuracy(self.outputs, self.placeholders['labels'],
                                        self.placeholders['labels_mask'])
    # 构建模型:两层GCN
    def _build(self):

        self.layers.append(GraphConvolution(input_dim=self.input_dim,
                                            output_dim=FLAGS.hidden1,
                                            placeholders=self.placeholders,
                                            act=tf.nn.relu,
                                            dropout=True,
                                            sparse_inputs=True,
                                            logging=self.logging))

        self.layers.append(GraphConvolution(input_dim=FLAGS.hidden1,
                                            output_dim=self.output_dim,
                                            placeholders=self.placeholders,
                                            act=lambda x: x,
                                            dropout=True,
                                            logging=self.logging))
    # 模型预测
    def predict(self):
        return tf.nn.softmax(self.outputs)

2 实践

更新中...

原文地址:https://www.cnblogs.com/think90/p/11502647.html