8

Is there a way to extract the diagonal of a square matrix in TensorFlow? That is, for a matrix like this:

[
 [0, 1, 2],
 [3, 4, 5],
 [6, 7, 8]
]

I want to fetch the elements: [0, 4, 8]

In numpy, this is pretty straight-forward via np.diag:

In TensorFlow, there is a diag function, but it only forms a new matrix with the elements specified in the argument on the diagonal, which is not what I want.

I could imagine how this could be done via striding... but I don't see striding for tensors in TensorFlow.

9

with tensorflow 0.8 its possible to extract the diagonal elements with tf.diag_part() (see documentation)

UPDATE

for tensorflow >= r1.12 its tf.linalg.tensor_diag_part (see documentation)

1
  • 1
    I updated the link. It seems they renamed / moved the function to the linalg-package
    – lhlmgr
    Dec 5 '18 at 15:22
4

Currently it is possible to extract diagonal elements with tf.diag_part. Here is their example:

"""
'input' is [[1, 0, 0, 0],
            [0, 2, 0, 0],
            [0, 0, 3, 0],
            [0, 0, 0, 4]]
"""

tf.diag_part(input) ==> [1, 2, 3, 4]

Old answer (when diag_part) was not available (still relevant if you want to achieve something that is not available now):

After looking though the math operations and tensor transformations, it does not look like such operation exists. Even if you can extract this data with matrix multiplications it would not be efficient (get diagonal is O(n)).

You have three approaches, starting with easy to hard.

  1. Evaluate the tensor, extract diagonal with numpy, build a variable with TF
  2. Use tf.pack in a way Anurag suggested (also extract the value 3 using tf.shape
  3. Write your own op in C++, rebuild TF and use it natively.
1
  • Sounds reasonable. Thanks!
    – theaNO
    Nov 16 '15 at 16:26
3

Use the tf.diag_part()

with tf.Session() as sess:
    x = tf.ones(shape=[3, 3])
    x_diag = tf.diag_part(x)
    print(sess.run(x_diag ))
2

This is probably is a workaround, but works.

>> sess = tensorflow.InteractiveSession()
>> x = tensorflow.Variable([[1,2,3],[4,5,6],[7,8,9]])
>> x.initializer.run()
>> z = tensorflow.pack([x[i,i] for i in range(3)])
>> z.eval()
array([1, 5, 9], dtype=int32)
1
  • Unfortunately this operation can be tremendously slow, not sure why though.
    – Literal
    Jan 16 '16 at 17:28
0

Use the gather operation.

x = tensorflow.Variable([[1,2,3],[4,5,6],[7,8,9]])
x_flat = tf.reshape(x, [-1])  # flatten the matrix
x_diag = tf.gather(x, [0, 3, 6])
0

Depending on the context, a mask can be a nice way to `cancel' off diagonal elements of the matrix, especially if you plan in reducing it anyway:

mask = tf.diag(tf.ones([n]))
y = tf.mul(mask,y)
cost = -tf.reduce_sum(y)

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