diff options
Diffstat (limited to 'tensorflow/contrib/linear_optimizer/python/sdca_optimizer.py')
-rw-r--r-- | tensorflow/contrib/linear_optimizer/python/sdca_optimizer.py | 6 |
1 files changed, 3 insertions, 3 deletions
diff --git a/tensorflow/contrib/linear_optimizer/python/sdca_optimizer.py b/tensorflow/contrib/linear_optimizer/python/sdca_optimizer.py index 9872c6f97c..8ebe45d851 100644 --- a/tensorflow/contrib/linear_optimizer/python/sdca_optimizer.py +++ b/tensorflow/contrib/linear_optimizer/python/sdca_optimizer.py @@ -158,7 +158,7 @@ class SDCAOptimizer(object): # exactly 2 (i.e., its shape should be [batch_size, column.dim]). check_rank_op = control_flow_ops.Assert( math_ops.less_equal(array_ops.rank(transformed_tensor), 2), - ['transformed_tensor shouls have rank at most 2.']) + ['transformed_tensor should have rank at most 2.']) # Reshape to [batch_size, dense_column_dimension]. with ops.control_dependencies([check_rank_op]): transformed_tensor = array_ops.reshape(transformed_tensor, [ @@ -172,7 +172,7 @@ class SDCAOptimizer(object): elif isinstance(column, layers.feature_column._BucketizedColumn): # pylint: disable=protected-access # A bucketized column corresponds to a sparse feature in SDCA. The # bucketized feature is "sparsified" for SDCA by converting it to a - # SparseFeatureColumn respresenting the one-hot encoding of the + # SparseFeatureColumn representing the one-hot encoding of the # bucketized feature. # # TODO(sibyl-vie3Poto): Explore whether it is more efficient to translate a @@ -220,7 +220,7 @@ class SDCAOptimizer(object): # occur multiple times for a single example. projected_ids = projection_length * example_ids + flat_ids - # Remove any redudant ids. + # Remove any redundant ids. ids, idx = array_ops.unique(projected_ids) # Keep only one example id per duplicated ids. example_ids_filtered = math_ops.unsorted_segment_min( |