use anofox_ml_core::{Fit, Float, Predict, Result, RustMlError};
use ndarray::{Array1, Array2};
trait FitPredBox<F: Float>: Send + Sync {
fn fit_box(&self, x: &Array2<F>, y: &Array1<F>) -> Result<Box<dyn PredBox<F>>>;
}
trait PredBox<F: Float>: Send + Sync {
fn predict_box(&self, x: &Array2<F>) -> Result<Array1<F>>;
}
impl<F, T> FitPredBox<F> for T
where
F: Float,
T: Fit<F> + Send + Sync,
T::Fitted: Predict<F> + Send + Sync + 'static,
{
fn fit_box(&self, x: &Array2<F>, y: &Array1<F>) -> Result<Box<dyn PredBox<F>>> {
let fitted = Fit::fit(self, x, y)?;
Ok(Box::new(fitted))
}
}
impl<F, T> PredBox<F> for T
where
F: Float,
T: Predict<F> + Send + Sync,
{
fn predict_box(&self, x: &Array2<F>) -> Result<Array1<F>> {
self.predict(x)
}
}
pub struct StackingRegressor<F: Float> {
base_estimators: Vec<(String, Box<dyn FitPredBox<F>>)>,
meta_estimator: Box<dyn FitPredBox<F>>,
cv_folds: usize,
}
impl<F: Float> StackingRegressor<F> {
pub fn new<M>(meta_estimator: M) -> Self
where
M: Fit<F> + Send + Sync + 'static,
M::Fitted: Predict<F> + Send + Sync + 'static,
{
Self {
base_estimators: Vec::new(),
meta_estimator: Box::new(meta_estimator),
cv_folds: 5,
}
}
pub fn push<T>(mut self, name: impl Into<String>, estimator: T) -> Self
where
T: Fit<F> + Send + Sync + 'static,
T::Fitted: Predict<F> + Send + Sync + 'static,
{
self.base_estimators
.push((name.into(), Box::new(estimator)));
self
}
pub fn with_cv_folds(mut self, cv_folds: usize) -> Self {
self.cv_folds = cv_folds;
self
}
}
pub struct FittedStackingRegressor<F: Float> {
fitted_base: Vec<(String, Box<dyn PredBox<F>>)>,
fitted_meta: Box<dyn PredBox<F>>,
n_features: usize,
}
impl<F: Float> FittedStackingRegressor<F> {
pub fn estimator_names(&self) -> Vec<&str> {
self.fitted_base.iter().map(|(n, _)| n.as_str()).collect()
}
}
impl<F: Float + 'static> Fit<F> for StackingRegressor<F> {
type Fitted = FittedStackingRegressor<F>;
fn fit(&self, x: &Array2<F>, y: &Array1<F>) -> Result<Self::Fitted> {
if self.base_estimators.is_empty() {
return Err(RustMlError::InvalidParameter(
"StackingRegressor needs at least one base estimator".into(),
));
}
if x.nrows() != y.len() {
return Err(RustMlError::ShapeMismatch(format!(
"X has {} rows but y has {} elements",
x.nrows(),
y.len()
)));
}
let n = x.nrows();
if n < 2 {
return Err(RustMlError::EmptyInput("need at least 2 samples".into()));
}
let n_base = self.base_estimators.len();
let k = self.cv_folds.min(n);
let folds = simple_k_fold(n, k);
let mut meta_features = Array2::zeros((n, n_base));
for (bi, (_, est)) in self.base_estimators.iter().enumerate() {
for (train_idx, test_idx) in &folds {
let x_train = select_rows(x, train_idx);
let y_train = select_elements(y, train_idx);
let x_test = select_rows(x, test_idx);
let fitted = est.fit_box(&x_train, &y_train)?;
let preds = fitted.predict_box(&x_test)?;
for (li, &gi) in test_idx.iter().enumerate() {
meta_features[[gi, bi]] = preds[li];
}
}
}
let fitted_meta = self.meta_estimator.fit_box(&meta_features, y)?;
let mut fitted_base = Vec::with_capacity(n_base);
for (name, est) in &self.base_estimators {
let fitted = est.fit_box(x, y)?;
fitted_base.push((name.clone(), fitted));
}
Ok(FittedStackingRegressor {
fitted_base,
fitted_meta,
n_features: x.ncols(),
})
}
}
impl<F: Float> Predict<F> for FittedStackingRegressor<F> {
fn predict(&self, x: &Array2<F>) -> Result<Array1<F>> {
if x.ncols() != self.n_features {
return Err(RustMlError::ShapeMismatch(format!(
"expected {} features, got {}",
self.n_features,
x.ncols()
)));
}
let n = x.nrows();
let n_base = self.fitted_base.len();
let mut meta_features = Array2::zeros((n, n_base));
for (bi, (_, model)) in self.fitted_base.iter().enumerate() {
let preds = model.predict_box(x)?;
for i in 0..n {
meta_features[[i, bi]] = preds[i];
}
}
self.fitted_meta.predict_box(&meta_features)
}
}
fn simple_k_fold(n: usize, k: usize) -> Vec<(Vec<usize>, Vec<usize>)> {
let fold_size = n / k;
let remainder = n % k;
let mut folds = Vec::with_capacity(k);
let mut start = 0;
for f in 0..k {
let end = start + fold_size + if f < remainder { 1 } else { 0 };
let test: Vec<usize> = (start..end).collect();
let train: Vec<usize> = (0..start).chain(end..n).collect();
folds.push((train, test));
start = end;
}
folds
}
fn select_rows<F: Float>(x: &Array2<F>, indices: &[usize]) -> Array2<F> {
let ncols = x.ncols();
let mut data = Vec::with_capacity(indices.len() * ncols);
for &i in indices {
for j in 0..ncols {
data.push(x[[i, j]]);
}
}
Array2::from_shape_vec((indices.len(), ncols), data).unwrap()
}
fn select_elements<F: Float>(y: &Array1<F>, indices: &[usize]) -> Array1<F> {
Array1::from_vec(indices.iter().map(|&i| y[i]).collect())
}
#[cfg(test)]
mod tests {
use super::*;
use anofox_ml_trees::DecisionTreeRegressor;
use ndarray::array;
#[test]
fn test_stacking_regressor_basic() {
let x = array![[1.0], [2.0], [3.0], [4.0], [5.0], [6.0], [7.0], [8.0]];
let y = array![2.0, 4.0, 6.0, 8.0, 10.0, 12.0, 14.0, 16.0];
let sr = StackingRegressor::new(DecisionTreeRegressor::default())
.push(
"t1",
DecisionTreeRegressor {
max_depth: Some(2),
..Default::default()
},
)
.push(
"t2",
DecisionTreeRegressor {
max_depth: Some(3),
..Default::default()
},
)
.with_cv_folds(2);
let fitted: FittedStackingRegressor<f64> = sr.fit(&x, &y).unwrap();
let preds = fitted.predict(&x).unwrap();
assert_eq!(preds.len(), 8);
for &p in preds.iter() {
assert!(p.is_finite());
}
}
#[test]
fn test_stacking_regressor_names() {
let x = array![[1.0], [2.0], [3.0], [4.0]];
let y = array![1.0, 2.0, 3.0, 4.0];
let sr = StackingRegressor::new(DecisionTreeRegressor::default())
.push("a", DecisionTreeRegressor::default())
.push("b", DecisionTreeRegressor::default())
.with_cv_folds(2);
let fitted: FittedStackingRegressor<f64> = sr.fit(&x, &y).unwrap();
assert_eq!(fitted.estimator_names(), vec!["a", "b"]);
}
#[test]
fn test_stacking_regressor_empty_base_error() {
let x = array![[1.0], [2.0]];
let y = array![1.0, 2.0];
let sr = StackingRegressor::<f64>::new(DecisionTreeRegressor::default());
assert!(sr.fit(&x, &y).is_err());
}
#[test]
fn test_stacking_regressor_predict_shape_mismatch() {
let x = array![[1.0, 2.0], [3.0, 4.0], [5.0, 6.0], [7.0, 8.0]];
let y = array![1.0, 2.0, 3.0, 4.0];
let sr = StackingRegressor::new(DecisionTreeRegressor::default())
.push("t1", DecisionTreeRegressor::default())
.with_cv_folds(2);
let fitted: FittedStackingRegressor<f64> = sr.fit(&x, &y).unwrap();
let x_bad = array![[1.0]];
assert!(fitted.predict(&x_bad).is_err());
}
}