HoeffdingAdaptiveTreeClassifier¶
Hoeffding Adaptive Tree classifier.
Parameters¶
-
grace_period (int) – defaults to
200
Number of instances a leaf should observe between split attempts.
-
max_depth (int) – defaults to
None
The maximum depth a tree can reach. If
None
, the tree will grow indefinitely. -
split_criterion (str) – defaults to
info_gain
Split criterion to use. - 'gini' - Gini - 'info_gain' - Information Gain - 'hellinger' - Helinger Distance
-
split_confidence (float) – defaults to
1e-07
Allowed error in split decision, a value closer to 0 takes longer to decide.
-
tie_threshold (float) – defaults to
0.05
Threshold below which a split will be forced to break ties.
-
leaf_prediction (str) – defaults to
nba
Prediction mechanism used at leafs. - 'mc' - Majority Class - 'nb' - Naive Bayes - 'nba' - Naive Bayes Adaptive
-
nb_threshold (int) – defaults to
0
Number of instances a leaf should observe before allowing Naive Bayes.
-
nominal_attributes (list) – defaults to
None
List of Nominal attributes. If empty, then assume that all numeric attributes should be treated as continuous.
-
splitter (river.tree.splitter.base.Splitter) – defaults to
None
The Splitter or Attribute Observer (AO) used to monitor the class statistics of numeric features and perform splits. Splitters are available in the
tree.splitter
module. Different splitters are available for classification and regression tasks. Classification and regression splitters can be distinguished by their propertyis_target_class
. This is an advanced option. Special care must be taken when choosing different splitters. By default,tree.splitter.GaussianSplitter
is used ifsplitter
isNone
. -
bootstrap_sampling (bool) – defaults to
True
If True, perform bootstrap sampling in the leaf nodes.
-
drift_window_threshold (int) – defaults to
300
Minimum number of examples an alternate tree must observe before being considered as a potential replacement to the current one.
-
adwin_confidence (float) – defaults to
0.002
The delta parameter used in the nodes' ADWIN drift detectors.
-
binary_split (bool) – defaults to
False
If True, only allow binary splits.
-
max_size (int) – defaults to
100
The max size of the tree, in Megabytes (MB).
-
memory_estimate_period (int) – defaults to
1000000
Interval (number of processed instances) between memory consumption checks.
-
stop_mem_management (bool) – defaults to
False
If True, stop growing as soon as memory limit is hit.
-
remove_poor_attrs (bool) – defaults to
False
If True, disable poor attributes to reduce memory usage.
-
merit_preprune (bool) – defaults to
True
If True, enable merit-based tree pre-pruning.
-
seed – defaults to
None
If int,
seed
is the seed used by the random number generator; If RandomState instance,seed
is the random number generator; If None, the random number generator is the RandomState instance used bynp.random
. Only used whenbootstrap_sampling=True
to direct the bootstrap sampling.
Attributes¶
-
height
-
leaf_prediction
Return the prediction strategy used by the tree at its leaves.
-
max_size
Max allowed size tree can reach (in MB).
-
n_active_leaves
-
n_alternate_trees
-
n_branches
-
n_inactive_leaves
-
n_leaves
-
n_nodes
-
n_pruned_alternate_trees
-
n_switch_alternate_trees
-
split_criterion
Return a string with the name of the split criterion being used by the tree.
-
summary
Collect metrics corresponding to the current status of the tree in a string buffer.
Examples¶
>>> from river import synth
>>> from river import evaluate
>>> from river import metrics
>>> from river import tree
>>> gen = synth.ConceptDriftStream(stream=synth.SEA(seed=42, variant=0),
... drift_stream=synth.SEA(seed=42, variant=1),
... seed=1, position=500, width=50)
>>> # Take 1000 instances from the infinite data generator
>>> dataset = iter(gen.take(1000))
>>> model = tree.HoeffdingAdaptiveTreeClassifier(
... grace_period=100,
... split_confidence=1e-5,
... leaf_prediction='nb',
... nb_threshold=10,
... seed=0
... )
>>> metric = metrics.Accuracy()
>>> evaluate.progressive_val_score(dataset, model, metric)
Accuracy: 91.09%
Methods¶
clone
Return a fresh estimator with the same parameters.
The clone has the same parameters but has not been updated with any data. This works by looking at the parameters from the class signature. Each parameter is either - recursively cloned if it's a River classes. - deep-copied via copy.deepcopy
if not. If the calling object is stochastic (i.e. it accepts a seed parameter) and has not been seeded, then the clone will not be idempotent. Indeed, this method's purpose if simply to return a new instance with the same input parameters.
debug_one
Print an explanation of how x
is predicted.
Parameters
- x (dict)
Returns
typing.Union[str, NoneType]: A representation of the path followed by the tree to predict x
; None
if
draw
Draw the tree using the graphviz
library.
Since the tree is drawn without passing incoming samples, classification trees will show the majority class in their leaves, whereas regression trees will use the target mean.
Parameters
- max_depth (int) – defaults to
None
The maximum depth a tree can reach. IfNone
, the tree will grow indefinitely.
learn_one
Train the model on instance x and corresponding target y.
Parameters
- x
- y
- sample_weight – defaults to
1.0
Returns
self
predict_one
Predict the label of a set of features x
.
Parameters
- x (dict)
Returns
typing.Union[bool, str, int]: The predicted label.
predict_proba_one
Predict the probability of each label for a dictionary of features x
.
Parameters
- x
Returns
A dictionary that associates a probability which each label.
to_dataframe
Return a representation of the current tree structure organized in a pandas.DataFrame
object.
In case the tree is empty or it only contains a single node (a leaf), None
is returned.
Returns
df
Notes¶
The Hoeffding Adaptive Tree 1 uses ADWIN 2 to monitor performance of branches on the tree and to replace them with new branches when their accuracy decreases if the new branches are more accurate.
The bootstrap sampling strategy is an improvement over the original Hoeffding Adaptive Tree algorithm. It is enabled by default since, in general, it results in better performance.
References¶
-
Bifet, Albert, and Ricard Gavaldà. "Adaptive learning from evolving data streams." In International Symposium on Intelligent Data Analysis, pp. 249-260. Springer, Berlin, Heidelberg, 2009. ↩
-
Bifet, Albert, and Ricard Gavaldà. "Learning from time-changing data with adaptive windowing." In Proceedings of the 2007 SIAM international conference on data mining, pp. 443-448. Society for Industrial and Applied Mathematics, 2007. ↩