pub struct Boost { /* private fields */ }
Expand description
Implementations§
source§impl Boost
impl Boost
sourcepub fn create() -> Result<Ptr<Boost>>
pub fn create() -> Result<Ptr<Boost>>
Creates the empty model. Use StatModel::train to train the model, Algorithm::load<Boost>(filename) to load the pre-trained model.
sourcepub fn load(filepath: &str, node_name: &str) -> Result<Ptr<Boost>>
pub fn load(filepath: &str, node_name: &str) -> Result<Ptr<Boost>>
Loads and creates a serialized Boost from a file
Use Boost::save to serialize and store an RTree to disk. Load the Boost from this file again, by calling this function with the path to the file. Optionally specify the node for the file containing the classifier
Parameters
- filepath: path to serialized Boost
- nodeName: name of node containing the classifier
C++ default parameters
- node_name: String()
sourcepub fn load_def(filepath: &str) -> Result<Ptr<Boost>>
pub fn load_def(filepath: &str) -> Result<Ptr<Boost>>
Loads and creates a serialized Boost from a file
Use Boost::save to serialize and store an RTree to disk. Load the Boost from this file again, by calling this function with the path to the file. Optionally specify the node for the file containing the classifier
Parameters
- filepath: path to serialized Boost
- nodeName: name of node containing the classifier
Note
This alternative version of [load] function uses the following default values for its arguments:
- node_name: String()
Trait Implementations§
source§impl AlgorithmTrait for Boost
impl AlgorithmTrait for Boost
source§impl AlgorithmTraitConst for Boost
impl AlgorithmTraitConst for Boost
fn as_raw_Algorithm(&self) -> *const c_void
source§fn write(&self, fs: &mut FileStorage) -> Result<()>
fn write(&self, fs: &mut FileStorage) -> Result<()>
Stores algorithm parameters in a file storage
source§fn write_1(&self, fs: &mut FileStorage, name: &str) -> Result<()>
fn write_1(&self, fs: &mut FileStorage, name: &str) -> Result<()>
Stores algorithm parameters in a file storage Read more
source§fn write_with_name(&self, fs: &Ptr<FileStorage>, name: &str) -> Result<()>
fn write_with_name(&self, fs: &Ptr<FileStorage>, name: &str) -> Result<()>
@deprecated Read more
source§fn write_with_name_def(&self, fs: &Ptr<FileStorage>) -> Result<()>
fn write_with_name_def(&self, fs: &Ptr<FileStorage>) -> Result<()>
👎Deprecated:
Note
Deprecated: ## Note
This alternative version of [write_with_name] function uses the following default values for its arguments: Read more
source§fn empty(&self) -> Result<bool>
fn empty(&self) -> Result<bool>
Returns true if the Algorithm is empty (e.g. in the very beginning or after unsuccessful read
source§fn save(&self, filename: &str) -> Result<()>
fn save(&self, filename: &str) -> Result<()>
Saves the algorithm to a file.
In order to make this method work, the derived class must implement Algorithm::write(FileStorage& fs).
source§fn get_default_name(&self) -> Result<String>
fn get_default_name(&self) -> Result<String>
Returns the algorithm string identifier.
This string is used as top level xml/yml node tag when the object is saved to a file or string.
source§impl BoostTrait for Boost
impl BoostTrait for Boost
fn as_raw_mut_Boost(&mut self) -> *mut c_void
source§fn set_boost_type(&mut self, val: i32) -> Result<()>
fn set_boost_type(&mut self, val: i32) -> Result<()>
Type of the boosting algorithm.
See Boost::Types. Default value is Boost::REAL. Read more
source§fn set_weak_count(&mut self, val: i32) -> Result<()>
fn set_weak_count(&mut self, val: i32) -> Result<()>
The number of weak classifiers.
Default value is 100. Read more
source§fn set_weight_trim_rate(&mut self, val: f64) -> Result<()>
fn set_weight_trim_rate(&mut self, val: f64) -> Result<()>
A threshold between 0 and 1 used to save computational time.
Samples with summary weight inline formula do not participate in the next
iteration of training. Set this parameter to 0 to turn off this functionality. Default value is 0.95. Read more
source§impl BoostTraitConst for Boost
impl BoostTraitConst for Boost
source§impl Boxed for Boost
impl Boxed for Boost
source§impl DTreesTrait for Boost
impl DTreesTrait for Boost
fn as_raw_mut_DTrees(&mut self) -> *mut c_void
source§fn set_max_categories(&mut self, val: i32) -> Result<()>
fn set_max_categories(&mut self, val: i32) -> Result<()>
Cluster possible values of a categorical variable into K<=maxCategories clusters to
find a suboptimal split.
If a discrete variable, on which the training procedure tries to make a split, takes more than
maxCategories values, the precise best subset estimation may take a very long time because the
algorithm is exponential. Instead, many decision trees engines (including our implementation)
try to find sub-optimal split in this case by clustering all the samples into maxCategories
clusters that is some categories are merged together. The clustering is applied only in n >
2-class classification problems for categorical variables with N > max_categories possible
values. In case of regression and 2-class classification the optimal split can be found
efficiently without employing clustering, thus the parameter is not used in these cases.
Default value is 10. Read more
source§fn set_max_depth(&mut self, val: i32) -> Result<()>
fn set_max_depth(&mut self, val: i32) -> Result<()>
The maximum possible depth of the tree.
That is the training algorithms attempts to split a node while its depth is less than maxDepth.
The root node has zero depth. The actual depth may be smaller if the other termination criteria
are met (see the outline of the training procedure [ml_intro_trees] “here”), and/or if the
tree is pruned. Default value is INT_MAX. Read more
source§fn set_min_sample_count(&mut self, val: i32) -> Result<()>
fn set_min_sample_count(&mut self, val: i32) -> Result<()>
If the number of samples in a node is less than this parameter then the node will not be split. Read more
source§fn set_cv_folds(&mut self, val: i32) -> Result<()>
fn set_cv_folds(&mut self, val: i32) -> Result<()>
If CVFolds > 1 then algorithms prunes the built decision tree using K-fold
cross-validation procedure where K is equal to CVFolds.
Default value is 10. Read more
source§fn set_use_surrogates(&mut self, val: bool) -> Result<()>
fn set_use_surrogates(&mut self, val: bool) -> Result<()>
If true then surrogate splits will be built.
These splits allow to work with missing data and compute variable importance correctly.
Default value is false. Read more
source§fn set_use1_se_rule(&mut self, val: bool) -> Result<()>
fn set_use1_se_rule(&mut self, val: bool) -> Result<()>
If true then a pruning will be harsher.
This will make a tree more compact and more resistant to the training data noise but a bit less
accurate. Default value is true. Read more
source§fn set_truncate_pruned_tree(&mut self, val: bool) -> Result<()>
fn set_truncate_pruned_tree(&mut self, val: bool) -> Result<()>
If true then pruned branches are physically removed from the tree.
Otherwise they are retained and it is possible to get results from the original unpruned (or
pruned less aggressively) tree. Default value is true. Read more
source§fn set_regression_accuracy(&mut self, val: f32) -> Result<()>
fn set_regression_accuracy(&mut self, val: f32) -> Result<()>
Termination criteria for regression trees.
If all absolute differences between an estimated value in a node and values of train samples
in this node are less than this parameter then the node will not be split further. Default
value is 0.01f Read more
source§impl DTreesTraitConst for Boost
impl DTreesTraitConst for Boost
fn as_raw_DTrees(&self) -> *const c_void
source§fn get_max_categories(&self) -> Result<i32>
fn get_max_categories(&self) -> Result<i32>
Cluster possible values of a categorical variable into K<=maxCategories clusters to
find a suboptimal split.
If a discrete variable, on which the training procedure tries to make a split, takes more than
maxCategories values, the precise best subset estimation may take a very long time because the
algorithm is exponential. Instead, many decision trees engines (including our implementation)
try to find sub-optimal split in this case by clustering all the samples into maxCategories
clusters that is some categories are merged together. The clustering is applied only in n >
2-class classification problems for categorical variables with N > max_categories possible
values. In case of regression and 2-class classification the optimal split can be found
efficiently without employing clustering, thus the parameter is not used in these cases.
Default value is 10. Read more
source§fn get_max_depth(&self) -> Result<i32>
fn get_max_depth(&self) -> Result<i32>
The maximum possible depth of the tree.
That is the training algorithms attempts to split a node while its depth is less than maxDepth.
The root node has zero depth. The actual depth may be smaller if the other termination criteria
are met (see the outline of the training procedure [ml_intro_trees] “here”), and/or if the
tree is pruned. Default value is INT_MAX. Read more
source§fn get_min_sample_count(&self) -> Result<i32>
fn get_min_sample_count(&self) -> Result<i32>
If the number of samples in a node is less than this parameter then the node will not be split. Read more
source§fn get_cv_folds(&self) -> Result<i32>
fn get_cv_folds(&self) -> Result<i32>
If CVFolds > 1 then algorithms prunes the built decision tree using K-fold
cross-validation procedure where K is equal to CVFolds.
Default value is 10. Read more
source§fn get_use_surrogates(&self) -> Result<bool>
fn get_use_surrogates(&self) -> Result<bool>
If true then surrogate splits will be built.
These splits allow to work with missing data and compute variable importance correctly.
Default value is false. Read more
source§fn get_use1_se_rule(&self) -> Result<bool>
fn get_use1_se_rule(&self) -> Result<bool>
If true then a pruning will be harsher.
This will make a tree more compact and more resistant to the training data noise but a bit less
accurate. Default value is true. Read more
source§fn get_truncate_pruned_tree(&self) -> Result<bool>
fn get_truncate_pruned_tree(&self) -> Result<bool>
If true then pruned branches are physically removed from the tree.
Otherwise they are retained and it is possible to get results from the original unpruned (or
pruned less aggressively) tree. Default value is true. Read more
source§fn get_regression_accuracy(&self) -> Result<f32>
fn get_regression_accuracy(&self) -> Result<f32>
Termination criteria for regression trees.
If all absolute differences between an estimated value in a node and values of train samples
in this node are less than this parameter then the node will not be split further. Default
value is 0.01f Read more
source§fn get_priors(&self) -> Result<Mat>
fn get_priors(&self) -> Result<Mat>
The array of a priori class probabilities, sorted by the class label value. Read more
source§fn get_splits(&self) -> Result<Vector<DTrees_Split>>
fn get_splits(&self) -> Result<Vector<DTrees_Split>>
Returns all the splits Read more
source§impl StatModelTrait for Boost
impl StatModelTrait for Boost
fn as_raw_mut_StatModel(&mut self) -> *mut c_void
source§fn train_with_data(
&mut self,
train_data: &Ptr<TrainData>,
flags: i32
) -> Result<bool>
fn train_with_data( &mut self, train_data: &Ptr<TrainData>, flags: i32 ) -> Result<bool>
Trains the statistical model Read more
source§fn train_with_data_def(&mut self, train_data: &Ptr<TrainData>) -> Result<bool>
fn train_with_data_def(&mut self, train_data: &Ptr<TrainData>) -> Result<bool>
Trains the statistical model Read more
source§fn train(
&mut self,
samples: &impl ToInputArray,
layout: i32,
responses: &impl ToInputArray
) -> Result<bool>
fn train( &mut self, samples: &impl ToInputArray, layout: i32, responses: &impl ToInputArray ) -> Result<bool>
Trains the statistical model Read more
source§impl StatModelTraitConst for Boost
impl StatModelTraitConst for Boost
fn as_raw_StatModel(&self) -> *const c_void
source§fn get_var_count(&self) -> Result<i32>
fn get_var_count(&self) -> Result<i32>
Returns the number of variables in training samples
fn empty(&self) -> Result<bool>
source§fn is_trained(&self) -> Result<bool>
fn is_trained(&self) -> Result<bool>
Returns true if the model is trained
source§fn is_classifier(&self) -> Result<bool>
fn is_classifier(&self) -> Result<bool>
Returns true if the model is classifier
source§fn calc_error(
&self,
data: &Ptr<TrainData>,
test: bool,
resp: &mut impl ToOutputArray
) -> Result<f32>
fn calc_error( &self, data: &Ptr<TrainData>, test: bool, resp: &mut impl ToOutputArray ) -> Result<f32>
Computes error on the training or test dataset Read more
source§fn predict(
&self,
samples: &impl ToInputArray,
results: &mut impl ToOutputArray,
flags: i32
) -> Result<f32>
fn predict( &self, samples: &impl ToInputArray, results: &mut impl ToOutputArray, flags: i32 ) -> Result<f32>
Predicts response(s) for the provided sample(s) Read more
source§fn predict_def(&self, samples: &impl ToInputArray) -> Result<f32>
fn predict_def(&self, samples: &impl ToInputArray) -> Result<f32>
Predicts response(s) for the provided sample(s) Read more
impl Send for Boost
Auto Trait Implementations§
Blanket Implementations§
source§impl<T> BorrowMut<T> for Twhere
T: ?Sized,
impl<T> BorrowMut<T> for Twhere T: ?Sized,
source§fn borrow_mut(&mut self) -> &mut T
fn borrow_mut(&mut self) -> &mut T
Mutably borrows from an owned value. Read more