feat: integrates with nalgebra
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@@ -27,9 +27,10 @@ impl<T: FloatExt, M: Matrix<T>> PartialEq for LinearRegression<T, M> {
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impl<T: FloatExt, M: Matrix<T>> LinearRegression<T, M> {
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pub fn fit(x: &M, y: &M, solver: LinearRegressionSolver) -> LinearRegression<T, M>{
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pub fn fit(x: &M, y: &M::RowVector, solver: LinearRegressionSolver) -> LinearRegression<T, M>{
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let b = y.transpose();
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let y_m = M::from_row_vector(y.clone());
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let b = y_m.transpose();
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let (x_nrows, num_attributes) = x.shape();
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let (y_nrows, _) = b.shape();
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@@ -63,13 +64,46 @@ impl<T: FloatExt, M: Matrix<T>> LinearRegression<T, M> {
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}
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#[cfg(test)]
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mod tests {
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use super::*;
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use crate::linalg::naive::dense_matrix::*;
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mod tests {
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use super::*;
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use nalgebra::{DMatrix, RowDVector};
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use crate::linalg::naive::dense_matrix::*;
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#[test]
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fn ols_fit_predict() {
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let x = DMatrix::from_row_slice(16, 6, &[
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234.289, 235.6, 159.0, 107.608, 1947., 60.323,
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259.426, 232.5, 145.6, 108.632, 1948., 61.122,
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258.054, 368.2, 161.6, 109.773, 1949., 60.171,
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284.599, 335.1, 165.0, 110.929, 1950., 61.187,
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328.975, 209.9, 309.9, 112.075, 1951., 63.221,
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346.999, 193.2, 359.4, 113.270, 1952., 63.639,
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365.385, 187.0, 354.7, 115.094, 1953., 64.989,
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363.112, 357.8, 335.0, 116.219, 1954., 63.761,
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397.469, 290.4, 304.8, 117.388, 1955., 66.019,
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419.180, 282.2, 285.7, 118.734, 1956., 67.857,
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442.769, 293.6, 279.8, 120.445, 1957., 68.169,
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444.546, 468.1, 263.7, 121.950, 1958., 66.513,
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482.704, 381.3, 255.2, 123.366, 1959., 68.655,
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502.601, 393.1, 251.4, 125.368, 1960., 69.564,
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518.173, 480.6, 257.2, 127.852, 1961., 69.331,
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554.894, 400.7, 282.7, 130.081, 1962., 70.551]);
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let y: RowDVector<f64> = RowDVector::from_vec(vec!(83.0, 88.5, 88.2, 89.5, 96.2, 98.1, 99.0, 100.0, 101.2, 104.6, 108.4, 110.8, 112.6, 114.2, 115.7, 116.9));
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let y_hat_qr = LinearRegression::fit(&x, &y, LinearRegressionSolver::QR).predict(&x);
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let y_hat_svd = LinearRegression::fit(&x, &y, LinearRegressionSolver::SVD).predict(&x);
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assert!(y.iter().zip(y_hat_qr.iter()).all(|(&a, &b)| (a - b).abs() <= 5.0));
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assert!(y.iter().zip(y_hat_svd.iter()).all(|(&a, &b)| (a - b).abs() <= 5.0));
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}
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#[test]
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fn ols_fit_predict_nalgebra() {
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let x = DenseMatrix::from_array(&[
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&[234.289, 235.6, 159.0, 107.608, 1947., 60.323],
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&[259.426, 232.5, 145.6, 108.632, 1948., 61.122],
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@@ -88,15 +122,14 @@ mod tests {
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&[518.173, 480.6, 257.2, 127.852, 1961., 69.331],
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&[554.894, 400.7, 282.7, 130.081, 1962., 70.551]]);
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let y = DenseMatrix::from_array(&[&[83.0, 88.5, 88.2, 89.5, 96.2, 98.1, 99.0, 100.0, 101.2, 104.6, 108.4, 110.8, 112.6, 114.2, 115.7, 116.9]]);
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let y: Vec<f64> = vec!(83.0, 88.5, 88.2, 89.5, 96.2, 98.1, 99.0, 100.0, 101.2, 104.6, 108.4, 110.8, 112.6, 114.2, 115.7, 116.9);
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let y_hat_qr = DenseMatrix::from_row_vector(LinearRegression::fit(&x, &y, LinearRegressionSolver::QR).predict(&x));
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let y_hat_svd = DenseMatrix::from_row_vector(LinearRegression::fit(&x, &y, LinearRegressionSolver::SVD).predict(&x));
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assert!(y.approximate_eq(&y_hat_qr, 5.));
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assert!(y.approximate_eq(&y_hat_svd, 5.));
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let y_hat_qr = LinearRegression::fit(&x, &y, LinearRegressionSolver::QR).predict(&x);
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let y_hat_svd = LinearRegression::fit(&x, &y, LinearRegressionSolver::SVD).predict(&x);
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assert!(y.iter().zip(y_hat_qr.iter()).all(|(&a, &b)| (a - b).abs() <= 5.0));
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assert!(y.iter().zip(y_hat_svd.iter()).all(|(&a, &b)| (a - b).abs() <= 5.0));
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}
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@@ -120,7 +153,7 @@ mod tests {
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&[518.173, 480.6, 257.2, 127.852, 1961., 69.331],
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&[554.894, 400.7, 282.7, 130.081, 1962., 70.551]]);
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let y = DenseMatrix::from_array(&[&[83.0, 88.5, 88.2, 89.5, 96.2, 98.1, 99.0, 100.0, 101.2, 104.6, 108.4, 110.8, 112.6, 114.2, 115.7, 116.9]]);
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let y = vec!(83.0, 88.5, 88.2, 89.5, 96.2, 98.1, 99.0, 100.0, 101.2, 104.6, 108.4, 110.8, 112.6, 114.2, 115.7, 116.9);
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let lr = LinearRegression::fit(&x, &y, LinearRegressionSolver::QR);
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@@ -272,7 +272,7 @@ impl<T: FloatExt, M: Matrix<T>> LogisticRegression<T, M> {
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mod tests {
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use super::*;
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use crate::linalg::naive::dense_matrix::*;
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use ndarray::{arr1, arr2};
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use ndarray::{arr1, arr2, Array1};
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#[test]
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fn multiclass_objective_f() {
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@@ -443,13 +443,15 @@ mod tests {
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[4.9, 2.4, 3.3, 1.0],
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[6.6, 2.9, 4.6, 1.3],
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[5.2, 2.7, 3.9, 1.4]]);
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let y = arr1(&[0., 0., 0., 0., 0., 0., 0., 0., 0., 0., 1., 1., 1., 1., 1., 1., 1., 1., 1., 1.]);
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let y: Array1<f64> = arr1(&[0., 0., 0., 0., 0., 0., 0., 0., 0., 0., 1., 1., 1., 1., 1., 1., 1., 1., 1., 1.]);
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let lr = LogisticRegression::fit(&x, &y);
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let y_hat = lr.predict(&x);
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let y_hat = lr.predict(&x);
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let error: f64 = y.into_iter().zip(y_hat.into_iter()).map(|(&a, &b)| (a - b).abs()).sum();
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assert_eq!(y_hat, arr1(&[0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0]));
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assert!(error <= 1.0);
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}
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