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sparse matrix - Use coo_matrix in TensorFlow

I'm doing a Matrix Factorization in TensorFlow, I want to use coo_matrix from Spicy.sparse cause it uses less memory and it makes it easy to put all my data into my matrix for training data.

Is it possible to use coo_matrix to initialize a variable in tensorflow?

Or do I have to create a session and feed the data I got into tensorflow using sess.run() with feed_dict.

I hope that you understand my question and my problem otherwise comment and i will try to fix it.

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The closest thing TensorFlow has to scipy.sparse.coo_matrix is tf.SparseTensor, which is the sparse equivalent of tf.Tensor. It will probably be easiest to feed a coo_matrix into your program.

A tf.SparseTensor is a slight generalization of COO matrices, where the tensor is represented as three dense tf.Tensor objects:

  • indices: An N x D matrix of tf.int64 values in which each row represents the coordinates of a non-zero value. N is the number of non-zeroes, and D is the rank of the equivalent dense tensor (2 in the case of a matrix).
  • values: A length-N vector of values, where element i is the value of the element whose coordinates are given on row i of indices.
  • dense_shape: A length-D vector of tf.int64, representing the shape of the equivalent dense tensor.

For example, you could use the following code, which uses tf.sparse_placeholder() to define a tf.SparseTensor that you can feed, and a tf.SparseTensorValue that represents the actual value being fed :

sparse_input = tf.sparse_placeholder(dtype=tf.float32, shape=[100, 100])
# ...
train_op = ...

coo_matrix = scipy.sparse.coo_matrix(...)

# Wrap `coo_matrix` in the `tf.SparseTensorValue` form that TensorFlow expects.
# SciPy stores the row and column coordinates as separate vectors, so we must 
# stack and transpose them to make an indices matrix of the appropriate shape.
tf_coo_matrix = tf.SparseTensorValue(
    indices=np.array([coo_matrix.rows, coo_matrix.cols]).T,
    values=coo_matrix.data,
    dense_shape=coo_matrix.shape)

Once you have converted your coo_matrix to a tf.SparseTensorValue, you can feed sparse_input with the tf.SparseTensorValue directly:

sess.run(train_op, feed_dict={sparse_input: tf_coo_matrix})

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