Updates the tree ensemble by either adding a layer to the last tree being grown
tf.raw_ops.BoostedTreesUpdateEnsemble(
tree_ensemble_handle,
feature_ids,
node_ids,
gains,
thresholds,
left_node_contribs,
right_node_contribs,
max_depth,
learning_rate,
pruning_mode,
name=None
)
or by starting a new tree.
Args |
tree_ensemble_handle
|
A Tensor of type resource .
Handle to the ensemble variable.
|
feature_ids
|
A Tensor of type int32 .
Rank 1 tensor with ids for each feature. This is the real id of
the feature that will be used in the split.
|
node_ids
|
A list of Tensor objects with type int32 .
List of rank 1 tensors representing the nodes for which this feature
has a split.
|
gains
|
A list with the same length as node_ids of Tensor objects with type float32 .
List of rank 1 tensors representing the gains for each of the feature's
split.
|
thresholds
|
A list with the same length as node_ids of Tensor objects with type int32 .
List of rank 1 tensors representing the thesholds for each of the
feature's split.
|
left_node_contribs
|
A list with the same length as node_ids of Tensor objects with type float32 .
List of rank 2 tensors with left leaf contribs for each of
the feature's splits. Will be added to the previous node values to constitute
the values of the left nodes.
|
right_node_contribs
|
A list with the same length as node_ids of Tensor objects with type float32 .
List of rank 2 tensors with right leaf contribs for each
of the feature's splits. Will be added to the previous node values to constitute
the values of the right nodes.
|
max_depth
|
A Tensor of type int32 . Max depth of the tree to build.
|
learning_rate
|
A Tensor of type float32 .
shrinkage const for each new tree.
|
pruning_mode
|
An int that is >= 0 .
0-No pruning, 1-Pre-pruning, 2-Post-pruning.
|
name
|
A name for the operation (optional).
|
Returns |
The created Operation.
|