6

Suppose a Tensor containing :

[[0 0 1]
 [0 1 0]
 [1 0 0]]

How to get the dense representation in a native way (without using numpy or iterations) ?

[2,1,0]

There is tf.one_hot() to do the inverse, there is also tf.sparse_to_dense() that seems to do it but I was not able to figure out how to use it.

  • The second answer (not the accepted one) is best: tf.argmax(x, 1) – wordsforthewise Feb 21 at 0:26
9
vec = tf.constant([[0, 0, 1], [0, 1, 0], [1, 0, 0]])
locations = tf.where(tf.equal(vec, 1))
# This gives array of locations of "1" indices below
# => [[0, 2], [1, 1], [2, 0]])

# strip first column
indices = locations[:,1]
sess = tf.Session()
print(sess.run(indices))
# => [2 1 0]
  • Thank you! Just curious about sparse_to_dense. What is it for then? – znat Oct 11 '16 at 0:09
  • @znat TensorFlow's sparse_to_dense creates a dense tensor using the parameters for a SparseTensor. If you already have a SparseTensor, you could convert it to dense using sparse_tensor_to_dense – craymichael Oct 11 '16 at 14:24
  • 1
    I just realized this is basically a verbose way of writing argmax. – wordsforthewise Feb 21 at 0:26
15

tf.argmax(x, axis=1) should do the job.

2

TensorFlow does not have a native dense to sparse conversion function/helper. Given that the input array is a dense tensor, such as the one you provided, you can define a function to convert a dense tensor to a sparse tensor.

def dense_to_sparse(dense_tensor):
    where_dense_non_zero = tf.where(tf.not_equal(dense_tensor, 0))
    indices = where_dense_non_zero
    values = tf.gather_nd(dense_tensor, where_dense_non_zero)
    shape = dense_tensor.get_shape()

    return tf.SparseTensor(
        indices=indices,
        values=values,
        shape=shape
    )

This helper function finds the indices and values where the Tensor is non-zero and outputs a Sparse tensor with those indices and values. Additionally, the shape is effectively copied over.

You do not want to use tf.sparse_to_dense as that gives you the opposite representation. If you want your output to be [2, 1, 0] instead, you'll need to index the indices. First, you'll need the indices where the array isn't 0:

indices = tf.where(tf.not_equal(dense_tensor, 0))

Then, you'll need to access the tensor using slicing/indicing:

output = indices[:, 1]

You might notice that 1 in the slice above is equivalent to the dimension of the tensor - 1. Therefore, to make these value generic, you could do something like:

output = indices[:, len(dense_tensor.get_shape()) - 1]

Although I'm not exactly sure what you'd do with these values (the value of the column where the value is). Hope this helped!

EDIT: Yaroslav's answer is better if you're looking for the indices/locations of where the input tensor if 1; it won't be extensible for tensors with non-1/0 values if that is required.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.