Struct forust_ml::splitter::MissingBranchSplitter
source · pub struct MissingBranchSplitter {
pub l2: f32,
pub gamma: f32,
pub min_leaf_weight: f32,
pub learning_rate: f32,
pub allow_missing_splits: bool,
pub constraints_map: ConstraintMap,
}Expand description
Missing branch splitter Always creates a separate branch for the missing values of a feature. This results, in every node having a specific “missing”, direction. If this node is able, it will be split further, otherwise it will a leaf node will be generated.
Fields§
§l2: f32§gamma: f32§min_leaf_weight: f32§learning_rate: f32§allow_missing_splits: bool§constraints_map: ConstraintMapTrait Implementations§
source§impl Splitter for MissingBranchSplitter
impl Splitter for MissingBranchSplitter
fn get_constraint(&self, feature: &usize) -> Option<&Constraint>
fn get_gamma(&self) -> f32
fn get_l2(&self) -> f32
source§fn evaluate_split(
&self,
left_gradient: f32,
left_hessian: f32,
right_gradient: f32,
right_hessian: f32,
missing_gradient: f32,
missing_hessian: f32,
lower_bound: f32,
upper_bound: f32,
constraint: Option<&Constraint>
) -> Option<(NodeInfo, NodeInfo, MissingInfo)>
fn evaluate_split( &self, left_gradient: f32, left_hessian: f32, right_gradient: f32, right_hessian: f32, missing_gradient: f32, missing_hessian: f32, lower_bound: f32, upper_bound: f32, constraint: Option<&Constraint> ) -> Option<(NodeInfo, NodeInfo, MissingInfo)>
Evaluate a split, returning the node info for the left, and right splits,
as well as the node info the missing data of a feature.
source§fn handle_split_info(
&self,
split_info: SplitInfo,
n_nodes: &usize,
node: &mut SplittableNode,
index: &mut [usize],
data: &Matrix<'_, u16>,
cuts: &JaggedMatrix<f64>,
grad: &[f32],
hess: &[f32],
parallel: bool
) -> Vec<SplittableNode>
fn handle_split_info( &self, split_info: SplitInfo, n_nodes: &usize, node: &mut SplittableNode, index: &mut [usize], data: &Matrix<'_, u16>, cuts: &JaggedMatrix<f64>, grad: &[f32], hess: &[f32], parallel: bool ) -> Vec<SplittableNode>
Handle the split info, creating the children nodes, this function
will return a vector of new splitable nodes, that can be added to the
growable stack, and further split, or converted to leaf nodes.
source§fn best_split(&self, node: &SplittableNode) -> Option<SplitInfo>
fn best_split(&self, node: &SplittableNode) -> Option<SplitInfo>
Find the best possible split, considering all feature histograms.
If we wanted to add Column sampling, this is probably where
we would need to do it, otherwise, it would be at the tree level.
fn best_feature_split( &self, node: &SplittableNode, feature: usize ) -> Option<SplitInfo>
source§fn split_node(
&self,
n_nodes: &usize,
node: &mut SplittableNode,
index: &mut [usize],
data: &Matrix<'_, u16>,
cuts: &JaggedMatrix<f64>,
grad: &[f32],
hess: &[f32],
parallel: bool
) -> Vec<SplittableNode>
fn split_node( &self, n_nodes: &usize, node: &mut SplittableNode, index: &mut [usize], data: &Matrix<'_, u16>, cuts: &JaggedMatrix<f64>, grad: &[f32], hess: &[f32], parallel: bool ) -> Vec<SplittableNode>
Split the node, if we cant find a best split, we will need to
return an empty vector, this node is a leaf.
Auto Trait Implementations§
impl RefUnwindSafe for MissingBranchSplitter
impl Send for MissingBranchSplitter
impl Sync for MissingBranchSplitter
impl Unpin for MissingBranchSplitter
impl UnwindSafe for MissingBranchSplitter
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