GmmAlgorithm
Defined in tensorflow/contrib/factorization/python/ops/gmm_ops.py
.
Tensorflow Gaussian mixture model clustering class.
__init__
__init__( data, num_classes, initial_means=None, params='wmc', covariance_type=FULL_COVARIANCE, random_seed=0 )
Constructor.
data
: a list of Tensors with data, each row is a new example.num_classes
: number of clusters.initial_means
: a Tensor with a matrix of means. If None, means are computed by sampling randomly.params
: Controls which parameters are updated in the training process. Can contain any combination of "w" for weights, "m" for means, and "c" for covariances.covariance_type
: one of "full", "diag".random_seed
: Seed for PRNG used to initialize seeds.Exception if covariance type is unknown.
alphas
alphas()
assignments
assignments()
Returns a list of Tensors with the matrix of assignments per shard.
clusters
clusters()
Returns the clusters with dimensions num_classes X 1 X num_dimensions.
covariances
covariances()
Returns the covariances matrices.
init_ops
init_ops()
Returns the initialization operation.
is_initialized
is_initialized()
Returns a boolean operation for initialized variables.
log_likelihood_op
log_likelihood_op()
Returns the log-likelihood operation.
scores
scores()
Returns the per-sample likelihood fo the data.
Log probabilities of each data point.
training_ops
training_ops()
Returns the training operation.
CLUSTERS_COVS_VARIABLE
CLUSTERS_VARIABLE
CLUSTERS_WEIGHT
© 2018 The TensorFlow Authors. All rights reserved.
Licensed under the Creative Commons Attribution License 3.0.
Code samples licensed under the Apache 2.0 License.
https://www.tensorflow.org/api_docs/python/tf/contrib/factorization/GmmAlgorithm