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Applies softmax to a batched N-D SparseTensor.
tf.sparse.softmax(
    sp_input, name=None
)
  The inputs represent an N-D SparseTensor with logical shape [..., B, C] (where N >= 2), and with indices sorted in the canonical lexicographic order.
This op is equivalent to applying the normal tf.nn.softmax() to each innermost logical submatrix with shape [B, C], but with the catch that the implicitly zero elements do not participate. Specifically, the algorithm is equivalent to:
(1) Applies tf.nn.softmax() to a densified view of each innermost submatrix with shape [B, C], along the size-C dimension; (2) Masks out the original implicitly-zero locations; (3) Renormalizes the remaining elements.
Hence, the SparseTensor result has exactly the same non-zero indices and shape.
# First batch: # [? e.] # [1. ? ] # Second batch: # [e ? ] # [e e ] shape = [2, 2, 2] # 3-D SparseTensor values = np.asarray([[[0., np.e], [1., 0.]], [[np.e, 0.], [np.e, np.e]]]) indices = np.vstack(np.where(values)).astype(np.int64).T result = tf.sparse.softmax(tf.sparse.SparseTensor(indices, values, shape)) # ...returning a 3-D SparseTensor, equivalent to: # [? 1.] [1 ?] # [1. ? ] and [.5 .5] # where ? means implicitly zero.
| Args | |
|---|---|
| sp_input | N-D SparseTensor, whereN >= 2. | 
| name | optional name of the operation. | 
| Returns | |
|---|---|
| output | N-D SparseTensorrepresenting the results. | 
    © 2022 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 4.0.
Code samples licensed under the Apache 2.0 License.
    https://www.tensorflow.org/versions/r2.9/api_docs/python/tf/sparse/softmax