对于深度学习,随着激活的恢复,在训练过程中输出变成了NAN,而Tanh正常



我训练的神经网络是深入强化学习的评论家网络。问题是,当该层的激活之一设置为relu或Elu时,输出将在一定的训练步骤后为NAN,而如果激活为TANH,则输出是正常的。代码如下(基于TensorFlow):

with tf.variable_scope('critic'):
        self.batch_size = tf.shape(self.tfs)[0]
        l_out_x = denseWN(x=self.tfs, name='l3', num_units=self.cell_size, nonlinearity=tf.nn.tanh, trainable=True,shape=[det*step*2, self.cell_size])
        l_out_x1 = denseWN(x=l_out_x, name='l3_1', num_units=32, trainable=True,nonlinearity=tf.nn.tanh, shape=[self.cell_size, 32])
        l_out_x2 = denseWN(x=l_out_x1, name='l3_2', num_units=32, trainable=True,nonlinearity=tf.nn.tanh,shape=[32, 32])
        l_out_x3 = denseWN(x=l_out_x2, name='l3_3', num_units=32, trainable=True,shape=[32, 32])
        self.v = denseWN(x=l_out_x3, name='l4', num_units=1,  trainable=True, shape=[32, 1])

这是基本层构造的代码:

def get_var_maybe_avg(var_name, ema,  trainable, shape):
    if var_name=='V':
        initializer = tf.contrib.layers.xavier_initializer()
        v = tf.get_variable(name=var_name, initializer=initializer, trainable=trainable, shape=shape)
    if var_name=='g':
        initializer = tf.constant_initializer(1.0)
        v = tf.get_variable(name=var_name, initializer=initializer, trainable=trainable, shape=[shape[-1]])
    if var_name=='b':
        initializer = tf.constant_initializer(0.1)
        v = tf.get_variable(name=var_name, initializer=initializer, trainable=trainable, shape=[shape[-1]])
    if ema is not None:
        v = ema.average(v)
    return v
def get_vars_maybe_avg(var_names, ema, trainable, shape):
    vars=[]
    for vn in var_names:
        vars.append(get_var_maybe_avg(vn, ema, trainable=trainable, shape=shape))
    return vars
def denseWN(x, name, num_units, trainable, shape, nonlinearity=None, ema=None, **kwargs):
    with tf.variable_scope(name):
        V, g, b = get_vars_maybe_avg(['V', 'g', 'b'], ema, trainable=trainable, shape=shape)
        x = tf.matmul(x, V)
        scaler = g/tf.sqrt(tf.reduce_sum(tf.square(V),[0]))
        x = tf.reshape(scaler,[1,num_units])*x + tf.reshape(b,[1,num_units])
        if nonlinearity is not None:
            x = nonlinearity(x)
        return x

这是训练网络的代码:

self.tfdc_r = tf.placeholder(tf.float32, [None, 1], 'discounted_r')
self.advantage = self.tfdc_r - self.v
l1_regularizer = tf.contrib.layers.l1_regularizer(scale=0.005, scope=None)
self.weights = tf.trainable_variables()
regularization_penalty_critic = tf.contrib.layers.apply_regularization(l1_regularizer, self.weights)
self.closs = tf.reduce_mean(tf.square(self.advantage))
self.optimizer = tf.train.RMSPropOptimizer(0.0001, 0.99, 0.0, 1e-6)
self.grads_and_vars = self.optimizer.compute_gradients(self.closs)
self.grads_and_vars = [[tf.clip_by_norm(grad,5), var] for grad, var in self.grads_and_vars if grad is not None]
self.ctrain_op = self.optimizer.apply_gradients(self.grads_and_vars, global_step=tf.contrib.framework.get_global_step())

看来您正在面临具有relu激活功能爆炸梯度的问题(NaN的含义 - 非常大的激活)。有几种解决此问题的技术,例如批处理归一化(更改网络体系结构)或微妙的变量初始化(这是我先尝试的)。

您正在使用Xavier初始化对不同层的V变量,这确实适合物流Sigmoid激活(请参阅Xavier Glorot和Yoshua Bengio的论文),或者换句话说,tanh

RELU激活函数(及其包括ELU在内的变体)的首选初始化策略是初始化。在TensorFlow中,它通过tf.variance_scaling_initializer实现:

initializer = tf.variance_scaling_initializer()
v = tf.get_variable(name=var_name, initializer=initializer, ...)

您可能还想尝试bg变量的较小值,但是仅通过查看模型就很难说出确切的值。如果没有任何帮助,请考虑在模型中添加批处理层以控制激活分布。

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