tf.raw_ops.SparseCrossV2
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Generates sparse cross from a list of sparse and dense tensors.
tf.raw_ops.SparseCrossV2(
indices, values, shapes, dense_inputs, sep, name=None
)
The op takes two lists, one of 2D SparseTensor and one of 2D Tensor, each
representing features of one feature column. It outputs a 2D SparseTensor with
the batchwise crosses of these features.
For example, if the inputs are
inputs[0]: SparseTensor with shape = [2, 2]
[0, 0]: "a"
[1, 0]: "b"
[1, 1]: "c"
inputs[1]: SparseTensor with shape = [2, 1]
[0, 0]: "d"
[1, 0]: "e"
inputs[2]: Tensor [["f"], ["g"]]
then the output will be
shape = [2, 2]
[0, 0]: "a_X_d_X_f"
[1, 0]: "b_X_e_X_g"
[1, 1]: "c_X_e_X_g"
if hashed_output=true then the output will be
shape = [2, 2]
[0, 0]: FingerprintCat64(
Fingerprint64("f"), FingerprintCat64(
Fingerprint64("d"), Fingerprint64("a")))
[1, 0]: FingerprintCat64(
Fingerprint64("g"), FingerprintCat64(
Fingerprint64("e"), Fingerprint64("b")))
[1, 1]: FingerprintCat64(
Fingerprint64("g"), FingerprintCat64(
Fingerprint64("e"), Fingerprint64("c")))
Args |
indices
|
A list of Tensor objects with type int64.
2-D. Indices of each input SparseTensor.
|
values
|
A list of Tensor objects with types from: int64, string.
1-D. values of each SparseTensor.
|
shapes
|
A list with the same length as indices of Tensor objects with type int64.
1-D. Shapes of each SparseTensor.
|
dense_inputs
|
A list of Tensor objects with types from: int64, string.
2-D. Columns represented by dense Tensor.
|
sep
|
A Tensor of type string.
string used when joining a list of string inputs, can be used as separator later.
|
name
|
A name for the operation (optional).
|
Returns |
A tuple of Tensor objects (output_indices, output_values, output_shape).
|
output_indices
|
A Tensor of type int64.
|
output_values
|
A Tensor of type string.
|
output_shape
|
A Tensor of type int64.
|
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Last updated 2022-10-27 UTC.
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