0

I would like to make a 2D matrix for the model:

y = Mx

where M is a block matrix with the form:

enter image description here

and A and B are square matrices that contain a mixture of variables and constants. enter image description here enter image description here

How can I set up the matrix, M, in Tensorflow that will keep the block structure and only optimize for specific elements of A and B?

2

Here is one way you can do this:

import tensorflow as tf

a11 = tf.Variable(1.0)
a12 = tf.Variable(2.0)
a22 = tf.Variable(3.0)
b12 = tf.Variable(4.0)
zero = tf.constant(0.0)

A = tf.reshape(tf.stack([a11,a12,zero,a22]),(2,2))
B = tf.reshape(tf.stack([zero,b12,zero,zero]),(2,2))
M = tf.concat([tf.concat([A,B],1),tf.concat([B,A],1)],0)
| improve this answer | |
  • This is what I need, thanks! Just curious, if I wanted to scale up my code (A and B are actually 6x6 matrices), is there a way to use loops? – Jonathan Lym Feb 13 '18 at 21:58
  • 1
    For the more general problem, of defining a large matrix A such that some of its elements are constants (non trainable), I think I have a nice solution but it's hard fit in here. The idea is to define (1) a list of indices where the matrix should be constant, and (2) a list of tf.Variables; and then use a loop or list comprehension to build the final matrix. – Lior Feb 13 '18 at 22:20
  • That makes sense. Thanks! – Jonathan Lym Feb 14 '18 at 2:28

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.