feat: + cross_validate, trait Predictor, refactoring

This commit is contained in:
Volodymyr Orlov
2020-12-22 15:41:53 -08:00
parent 40dfca702e
commit a2be9e117f
34 changed files with 977 additions and 369 deletions
+7
View File
@@ -30,6 +30,7 @@
//! let nb = CategoricalNB::fit(&x, &y, Default::default()).unwrap();
//! let y_hat = nb.predict(&x).unwrap();
//! ```
use crate::base::Predictor;
use crate::error::Failed;
use crate::linalg::BaseVector;
use crate::linalg::Matrix;
@@ -246,6 +247,12 @@ pub struct CategoricalNB<T: RealNumber, M: Matrix<T>> {
inner: BaseNaiveBayes<T, M, CategoricalNBDistribution<T>>,
}
impl<T: RealNumber, M: Matrix<T>> Predictor<M, M::RowVector> for CategoricalNB<T, M> {
fn predict(&self, x: &M) -> Result<M::RowVector, Failed> {
self.predict(x)
}
}
impl<T: RealNumber, M: Matrix<T>> CategoricalNB<T, M> {
/// Fits CategoricalNB with given data
/// * `x` - training data of size NxM where N is the number of samples and M is the number of