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KernelRidgeRegression

Struct KernelRidgeRegression 

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pub struct KernelRidgeRegression { /* private fields */ }
Expand description

Kernel Ridge Regression

§Example

use scirs2_transform::kernel::{KernelRidgeRegression, KernelType};
use scirs2_core::ndarray::{Array1, Array2};

let x = Array2::<f64>::zeros((50, 3));
let y = Array1::<f64>::zeros(50);
let mut krr = KernelRidgeRegression::new(1.0, KernelType::RBF { gamma: 0.1 });
krr.fit(&x, &y).expect("should succeed");
let predictions = krr.predict(&x).expect("should succeed");

Implementations§

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impl KernelRidgeRegression

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pub fn new(alpha: f64, kernel: KernelType) -> Self

Create a new KernelRidgeRegression

§Arguments
  • alpha - Regularization parameter (lambda). Larger values = more regularization.
  • kernel - The kernel function to use
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pub fn with_alpha(self, alpha: f64) -> Self

Set the regularization parameter

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pub fn dual_coef(&self) -> Option<&Array2<f64>>

Get the dual coefficients

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pub fn kernel(&self) -> &KernelType

Get the kernel type

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pub fn regularization(&self) -> f64

Get the regularization parameter

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pub fn fit<S1, S2>( &mut self, x: &ArrayBase<S1, Ix2>, y: &ArrayBase<S2, Ix1>, ) -> Result<()>
where S1: Data, S2: Data, S1::Elem: Float + NumCast, S2::Elem: Float + NumCast,

Fit the model with a single output target

§Arguments
  • x - Training data, shape (n_samples, n_features)
  • y - Target values, shape (n_samples,)
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pub fn fit_multi<S1, S2>( &mut self, x: &ArrayBase<S1, Ix2>, y: &ArrayBase<S2, Ix2>, ) -> Result<()>
where S1: Data, S2: Data, S1::Elem: Float + NumCast, S2::Elem: Float + NumCast,

Fit the model with multiple output targets

§Arguments
  • x - Training data, shape (n_samples, n_features)
  • y - Target values, shape (n_samples, n_outputs)
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pub fn predict<S>(&self, x: &ArrayBase<S, Ix2>) -> Result<Array1<f64>>
where S: Data, S::Elem: Float + NumCast,

Predict for new data (single output)

§Arguments
  • x - Test data, shape (n_test, n_features)
§Returns
  • Predictions, shape (n_test,) for single output
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pub fn predict_multi<S>(&self, x: &ArrayBase<S, Ix2>) -> Result<Array2<f64>>
where S: Data, S::Elem: Float + NumCast,

Predict for new data (multiple outputs)

§Arguments
  • x - Test data, shape (n_test, n_features)
§Returns
  • Predictions, shape (n_test, n_outputs)
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pub fn loo_cv(&self) -> Result<(Array2<f64>, f64)>

Leave-one-out cross-validation in closed form

Computes the LOO-CV predictions and error without explicitly re-fitting the model n times. Uses the formula:

LOO_residual_i = alpha_i / (K + lambda*I)^{-1}_{ii}

which requires only one matrix inversion.

§Returns
  • (loo_predictions, loo_mse) - LOO predictions for each sample and mean squared error
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pub fn auto_select_alpha<S1, S2>( x: &ArrayBase<S1, Ix2>, y: &ArrayBase<S2, Ix1>, kernel: &KernelType, alpha_values: &[f64], ) -> Result<(f64, f64)>
where S1: Data, S2: Data, S1::Elem: Float + NumCast, S2::Elem: Float + NumCast,

Automatic selection of the regularization parameter via LOO-CV

Tries multiple alpha values and selects the one with lowest LOO-CV error.

§Arguments
  • x - Training data
  • y - Target values (single output)
  • alpha_values - Candidate regularization parameters
§Returns
  • (best_alpha, best_mse) - Best alpha and corresponding LOO-CV MSE
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pub fn score<S>( &self, x: &ArrayBase<S, Ix2>, y_true: &Array1<f64>, ) -> Result<f64>
where S: Data, S::Elem: Float + NumCast,

Compute the R-squared score for the training data

§Arguments
  • y_true - True target values
§Returns
  • R-squared score

Trait Implementations§

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impl Clone for KernelRidgeRegression

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fn clone(&self) -> KernelRidgeRegression

Returns a duplicate of the value. Read more
1.0.0 · Source§

fn clone_from(&mut self, source: &Self)

Performs copy-assignment from source. Read more
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impl Debug for KernelRidgeRegression

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fn fmt(&self, f: &mut Formatter<'_>) -> Result

Formats the value using the given formatter. Read more

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🔬This is a nightly-only experimental API. (clone_to_uninit)
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