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Searched
refs:one_hot_column
(Results
1 - 8
of
8
) sorted by null
/external/tensorflow/tensorflow/contrib/timeseries/examples/
known_anomaly.py
53
one_hot_feature = tf.contrib.layers.
one_hot_column
(
/external/tensorflow/tensorflow/contrib/layers/python/layers/
feature_column_test.py
295
onehot_a = fc.
one_hot_column
(a)
301
onehot_b = fc.
one_hot_column
(b)
311
one_hot = fc.
one_hot_column
(sparse_column)
328
one_hot = fc.
one_hot_column
(weighted_ids)
344
one_hot_column
= fc.
one_hot_column
(hash_column)
345
one_hot_output =
one_hot_column
._to_dnn_input_layer(
385
one_hot = fc.
one_hot_column
(weighted_ids)
399
one_hot = fc.
one_hot_column
(ids)
410
column = fc.
one_hot_column
(a
[
all
...]
feature_column_ops_test.py
589
one_hot_column
= feature_column.
one_hot_column
(sparse_column)
600
columns = [
one_hot_column
, embedding_column, real_valued_column]
614
one_hot_column
= feature_column.
one_hot_column
(sparse_column)
625
columns = [
one_hot_column
, embedding_column, real_valued_column]
[
all
...]
feature_column.py
42
`embedding_column` or `
one_hot_column
`. `
one_hot_column
` will create a dense
45
of values that occur in the sparse tensor. Thus using a "
one_hot_column
" is
431
"Please use embedding_column or
one_hot_column
. column: {}".format(
827
"Please use embedding_column or
one_hot_column
. column: {}".format(
1299
def
one_hot_column
(sparse_id_column):
function
[
all
...]
/external/tensorflow/tensorflow/contrib/timeseries/python/timeseries/state_space_models/
structural_ensemble_test.py
106
one_hot_a = layers.
one_hot_column
(sparse_id_column=sparse_column_a)
/external/tensorflow/tensorflow/contrib/learn/python/learn/estimators/
dynamic_rnn_estimator_test.py
116
location_onehot = feature_column.
one_hot_column
(location)
dnn_linear_combined_test.py
114
one_hot_language = feature_column.
one_hot_column
(
[
all
...]
dnn_test.py
58
one_hot_language = feature_column.
one_hot_column
(
[
all
...]
Completed in 253 milliseconds