If I just use a single layer like this:

layer = tf.layers.dense(tf_x, 1, tf.nn.relu)

Is this just a single layer with a single node?

Or is it actually a set of layers (input, hidden, output) with 1 node? My network seemed to work properly with just 1 layer, so I was curious about the setup.

Consequently, does this setup below have 2 hidden layers (are layer1 and layer2 here both hidden layers)? Or actually just 1 (just layer 1)?

layer1 = tf.layers.dense(tf_x, 10, tf.nn.relu)
layer2 = tf.layers.dense(layer1, 1, tf.nn.relu)

tf_x is my input features tensor.

  • 1
    As to the second part of your question, layer1 would be called a hidden layer and layer2 would be the output layer. In order to investigate what the graph look like try loading your graph in tensorboard. – amo-ej1 Aug 15 '17 at 12:55
  • This is how I think I understand it, too. But it's different from what @ChristianFei says in the answer below. Your answer would mean, that in the first part, the layer would be an hidden layer and an output layer at the same time? Or is just an output layer? – sandboxj Aug 15 '17 at 13:56

tf.layers.dense adds a single layer to your network. The second argument is the number of neurons/nodes of the layer. For example:

# no hidden layers, dimension output layer = 1
output = tf.layers.dense(tf_x, 1, tf.nn.relu)

# one hidden layer, dimension hidden layer = 10,  dimension output layer = 1
hidden = tf.layers.dense(tf_x, 10, tf.nn.relu)
output = tf.layers.dense(hidden, 1, tf.nn.relu)

My network seemed to work properly with just 1 layer, so I was curious about the setup.

That is possible, for some tasks you will get decent results without hidden layers.


tf.layers.dense (tf.compat.v1.layers.dense) is only one layer with a amount of nodes. You can check on TensorFlow web site about tf.layers.dense (tf.compat.v1.layers.dense)

layer1 = tf.layers.dense(inputs=pool2_flat, units=1024, activation=tf.nn.relu)
layer2 = tf.layers.dense(inputs=layer1, units=1024, activation=tf.nn.relu)
  • Does your setup now have one hidden layer or two? If its just tf.layer.dense is just one layer, the correct answer is: one hidden layer, or? – sandboxj Aug 15 '17 at 12:50
  • input from previous Layer(pool2_flat). Hidden layer, 1024 nodes. Hidden layer, 1024 nodes. So there are 2 hidden layer with each 1024 nodes – Christian Frei Aug 15 '17 at 13:06
  • I don't get it. I have learned that the layers of a neural network are setup like this: cs231n.github.io/assets/nn1/neural_net2.jpeg . Isn't layer2 in this case the "output layer"? – sandboxj Aug 15 '17 at 13:53
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    Yes, you can call the last fullyconnected layer also output layer. Output layer is general the lastlayer with fits the tensors to an readable output. This means if your hidden layer has 1024 nodes and you want a to merge it on an output 0 or 1, your output layer will have 2 nodes. – Christian Frei Aug 15 '17 at 14:16

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