Semi-ready implementation of Simple KNN
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@@ -1,39 +1,51 @@
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use super::Distance;
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use crate::math::distance::Distance;
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use ndarray::{ArrayBase, Data, Dimension};
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use crate::common::AnyNumber;
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pub struct EuclidianDistance{}
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impl<A, S, D> Distance<ArrayBase<S, D>> for EuclidianDistance
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impl<A, S1, S2, D> Distance<ArrayBase<S2, D>> for ArrayBase<S1, D>
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where
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A: AnyNumber,
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S: Data<Elem = A>,
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D: Dimension
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A: AnyNumber,
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S1: Data<Elem = A>,
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S2: Data<Elem = A>,
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D: Dimension
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{
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fn distance_to(&self, other: &Self) -> f64
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{
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Self::distance(self, other)
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}
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fn distance(a: &ArrayBase<S, D>, b: &ArrayBase<S, D>) -> f64 {
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fn distance(a: &Self, b: &ArrayBase<S2, D>) -> f64
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{
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if a.len() != b.len() {
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panic!("vectors a and b have different length");
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} else {
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((a - b)*(a - b)).sum().to_f64().unwrap().sqrt()
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}
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}
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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 ndarray::arr1;
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use ndarray::{Array1, ArrayView1, arr1};
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#[test]
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fn measure_simple_euclidian_distance() {
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let a = arr1(&[1, 2, 3]);
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let b = arr1(&[4, 5, 6]);
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let d_arr = EuclidianDistance::distance(&a, &b);
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let d_view = EuclidianDistance::distance(&a.view(), &b.view());
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// let r1 = a.distance_to(&b);
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// let r2 = a.view().distance_to(&b.view());
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let d_arr = Array1::distance(&a, &b);
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let d_view = ArrayView1::distance(&a.view(), &b.view());
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// assert!((r1 - 5.19615242).abs() < 1e-8);
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// assert!((r2 - 5.19615242).abs() < 1e-8);
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assert!((d_arr - 5.19615242).abs() < 1e-8);
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assert!((d_view - 5.19615242).abs() < 1e-8);
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}
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@@ -43,7 +55,7 @@ mod tests {
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let a = arr1(&[-2.1968219, -0.9559913, -0.0431738, 1.0567679, 0.3853515]);
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let b = arr1(&[-1.7781325, -0.6659839, 0.9526148, -0.9460919, -0.3925300]);
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let d = EuclidianDistance::distance(&a, &b);
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let d = Array1::distance(&a, &b);
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assert!((d - 2.422302).abs() < 1e-6);
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}
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@@ -1,8 +1,9 @@
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pub mod euclidian;
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use num_traits::Float;
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pub trait Distance<T> {
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fn distance_to(&self, other: &Self) -> f64;
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fn distance(a: &Self, b: &T) -> f64;
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pub trait Distance<T>
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{
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fn distance(a: &T, b: &T) -> f64;
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}
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