I'm currently using the KMeans
Class from tensorflow.contrib.factorization
module. My input is (assuming all variables are defined):
kmeans = KMeans(inputs=X, num_clusters=k, distance_metric='cosine', use_mini_batch=True)
I'm following the documentation at https://www.tensorflow.org/api_docs/python/tf/contrib/factorization/KMeans to unpack the values like:
(all_scores, cluster_idx, scores, cluster_centers_initialized, init_op, train_op) = kmeans.training_graph()
I get the error:
----> (all_scores, cluster_idx, scores, cluster_centers_initialized, init_op, train_op) = kmeans.training_graph()
ValueError: too many values to unpack
I'm strongly guessing that the documentation in the link stated above isn't updated because the output of kmeans.training_graph()
is :
((<tf.Tensor 'sub_14:0' shape=(?, ?) dtype=float32>,),
(<tf.Tensor 'Squeeze_7:0' shape=<unknown> dtype=int64>,),
(<tf.Tensor 'Squeeze_6:0' shape=<unknown> dtype=float32>,),
<tf.Variable 'initialized_3:0' shape=() dtype=bool_ref>,
<tf.Variable 'clusters_3:0' shape=<unknown> dtype=float32_ref>,
tf.Tensor 'cond_3/Merge:0' shape=() dtype=bool>,
<tf.Operation 'group_deps_3' type=NoOp>)
Please let me know what is the extra returned valued that I'm not aware of by reading the documentation.