Fills empty rows in the input 2-D SparseTensor with a default value.
tf.raw_ops.SparseFillEmptyRows( indices, values, dense_shape, default_value, name=None ) The input SparseTensor is represented via the tuple of inputs (indices, values, dense_shape). The output SparseTensor has the same dense_shape but with indices output_indices and values output_values.
This op inserts a single entry for every row that doesn't have any values. The index is created as [row, 0, ..., 0] and the inserted value is default_value.
For example, suppose sp_input has shape [5, 6] and non-empty values:
[0, 1]: a [0, 3]: b [2, 0]: c [3, 1]: d Rows 1 and 4 are empty, so the output will be of shape [5, 6] with values:
[0, 1]: a [0, 3]: b [1, 0]: default_value [2, 0]: c [3, 1]: d [4, 0]: default_value The output SparseTensor will be in row-major order and will have the same shape as the input.
This op also returns an indicator vector shaped [dense_shape[0]] such that
empty_row_indicator[i] = True iff row i was an empty row. And a reverse index map vector shaped [indices.shape[0]] that is used during backpropagation,
reverse_index_map[j] = out_j s.t. indices[j, :] == output_indices[out_j, :]