Added wiener kernel
This commit is contained in:
@@ -1,14 +1,18 @@
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use ndarray::prelude::*;
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mod affine;
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mod constant;
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mod exponential;
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mod matern32;
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mod matern52;
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mod wiener;
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pub use affine::Affine;
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pub use constant::Constant;
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pub use exponential::Exponential;
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pub use matern32::Matern32;
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pub use matern52::Matern52;
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pub use wiener::Wiener;
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pub(crate) fn distance(ts1: &[f64], ts2: &[f64]) -> Array2<f64> {
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let mut r = Array2::zeros((ts1.len(), ts2.len()));
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@@ -30,6 +34,7 @@ pub trait Kernel {
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fn state_cov(&self, t: f64) -> Array2<f64>;
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fn measurement_vector(&self) -> Array1<f64>;
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fn feedback(&self) -> Array2<f64>;
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fn transition(&self, t0: f64, t1: f64) -> Array2<f64>;
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fn noise_effect(&self) -> Array2<f64> {
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unimplemented!();
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@@ -39,10 +44,8 @@ pub trait Kernel {
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unimplemented!();
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}
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fn transition(&self, t0: f64, t1: f64) -> Array2<f64>;
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fn noise_cov(&self, _t0: f64, _t1: f64) -> Array2<f64> {
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todo!();
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unimplemented!();
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}
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}
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152
src/kernel/affine.rs
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152
src/kernel/affine.rs
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@@ -0,0 +1,152 @@
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use std::iter::FromIterator;
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use ndarray::prelude::*;
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use super::Kernel;
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pub struct Affine {
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var_offset: f64,
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var_slope: f64,
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t0: f64,
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}
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impl Affine {
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pub fn new(var_offset: f64, var_slope: f64, t0: f64) -> Self {
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Affine {
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var_offset,
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var_slope,
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t0,
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}
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}
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}
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impl Kernel for Affine {
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fn k_mat(&self, ts1: &[f64], ts2: Option<&[f64]>) -> Array2<f64> {
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let ts2 = ts2.unwrap_or(ts1);
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let mut r = Array2::zeros((ts1.len(), ts2.len()));
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for (i, v1) in ts1.iter().enumerate() {
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for (j, v2) in ts2.iter().enumerate() {
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r[(i, j)] = (v1 - self.t0) * (v2 - self.t0);
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}
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}
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(r * self.var_slope) + self.var_offset
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}
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fn k_diag(&self, ts: &[f64]) -> Array1<f64> {
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let r = Array1::from_iter(ts.iter().map(|v| (v - self.t0).powi(2)));
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(r * self.var_slope) + self.var_offset
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}
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fn order(&self) -> usize {
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2
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}
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fn state_mean(&self, _t: f64) -> Array1<f64> {
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array![0.0, 0.0]
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}
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fn state_cov(&self, t: f64) -> Array2<f64> {
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let t = t - self.t0;
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array![[t.powi(2), t], [t, 1.0]] * self.var_slope
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+ array![[1.0, 0.0], [0.0, 0.0]] * self.var_offset
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}
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fn measurement_vector(&self) -> Array1<f64> {
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array![1.0, 0.0]
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}
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fn feedback(&self) -> Array2<f64> {
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array![[0.0, 1.0], [0.0, 0.0]]
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}
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fn noise_effect(&self) -> Array2<f64> {
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array![[0.0], [1.0]]
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}
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fn transition(&self, t0: f64, t1: f64) -> Array2<f64> {
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array![[1.0, t1 - t0], [0.0, 1.0]]
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}
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fn noise_cov(&self, _t0: f64, _t1: f64) -> Array2<f64> {
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array![[0.0, 0.0], [0.0, 0.0]]
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}
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}
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#[cfg(test)]
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mod tests {
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extern crate intel_mkl_src;
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use approx::assert_abs_diff_eq;
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use rand::{distributions::Standard, thread_rng, Rng};
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use super::*;
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#[test]
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fn test_kernel_matrix() {
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let kernel = Affine::new(0.0, 2.0, 0.0);
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let ts = [1.26, 1.46, 2.67];
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assert_abs_diff_eq!(
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kernel.k_mat(&ts, None),
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array![
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[3.1752000000000002, 3.6792, 6.7284],
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[3.6792, 4.263199999999999, 7.796399999999999],
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[6.7284, 7.796399999999999, 14.2578]
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]
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);
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}
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#[test]
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fn test_kernel_diag() {
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let kernel = Affine::new(0.0, 2.0, 0.0);
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let ts: Vec<_> = thread_rng()
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.sample_iter::<f64, _>(Standard)
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.take(10)
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.map(|x| x * 10.0)
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.collect();
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assert_eq!(kernel.k_mat(&ts, None).diag(), kernel.k_diag(&ts));
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}
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#[test]
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fn test_kernel_order() {
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let kernel = Affine::new(0.0, 2.0, 0.0);
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let m = kernel.order();
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assert_eq!(kernel.state_mean(0.0).shape(), &[m]);
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assert_eq!(kernel.state_cov(0.0).shape(), &[m, m]);
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assert_eq!(kernel.measurement_vector().shape(), &[m]);
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assert_eq!(kernel.feedback().shape(), &[m, m]);
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assert_eq!(kernel.noise_effect().shape()[0], m);
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assert_eq!(kernel.transition(0.0, 1.0).shape(), &[m, m]);
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assert_eq!(kernel.noise_cov(0.0, 1.0).shape(), &[m, m]);
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}
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#[test]
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fn test_ssm_variance() {
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let kernel = Affine::new(0.0, 2.0, 0.0);
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let ts: Vec<_> = thread_rng()
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.sample_iter::<f64, _>(Standard)
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.take(10)
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.map(|x| x * 10.0)
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.collect();
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let h = kernel.measurement_vector();
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let vars = ts
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.iter()
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.map(|t| h.dot(&kernel.state_cov(*t)).dot(&h))
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.collect::<Vec<_>>();
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assert_abs_diff_eq!(Array::from(vars), kernel.k_diag(&ts));
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}
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}
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143
src/kernel/wiener.rs
Normal file
143
src/kernel/wiener.rs
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@@ -0,0 +1,143 @@
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use std::iter::FromIterator;
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use ndarray::prelude::*;
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use super::Kernel;
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pub struct Wiener {
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var: f64,
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t0: f64,
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var_t0: f64,
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}
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impl Wiener {
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pub fn new(var: f64, t0: f64, var_t0: f64) -> Self {
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Wiener { var, t0, var_t0 }
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}
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}
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impl Kernel for Wiener {
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fn k_mat(&self, ts1: &[f64], ts2: Option<&[f64]>) -> Array2<f64> {
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let ts2 = ts2.unwrap_or(ts1);
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let mut r = Array2::zeros((ts1.len(), ts2.len()));
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for (i, v1) in ts1.iter().enumerate() {
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for (j, v2) in ts2.iter().enumerate() {
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r[(i, j)] = if v1 < v2 { v1 - self.t0 } else { v2 - self.t0 };
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}
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}
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(r * self.var) + self.var_t0
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}
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fn k_diag(&self, ts: &[f64]) -> Array1<f64> {
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(Array1::from_iter(ts.iter().map(|v| v - self.t0)) * self.var) + self.var_t0
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}
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fn order(&self) -> usize {
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1
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}
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fn state_mean(&self, _t: f64) -> Array1<f64> {
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array![0.0]
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}
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fn state_cov(&self, t: f64) -> Array2<f64> {
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array![[self.var * (t - self.t0) + self.var_t0]]
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}
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fn measurement_vector(&self) -> Array1<f64> {
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array![1.0]
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}
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fn feedback(&self) -> Array2<f64> {
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array![[0.0]]
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}
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fn noise_effect(&self) -> Array2<f64> {
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array![[1.0]]
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}
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fn transition(&self, _t0: f64, _t1: f64) -> Array2<f64> {
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array![[1.0]]
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}
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fn noise_cov(&self, t0: f64, t1: f64) -> Array2<f64> {
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array![[self.var * (t1 - t0)]]
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}
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}
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#[cfg(test)]
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mod tests {
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extern crate intel_mkl_src;
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use approx::assert_abs_diff_eq;
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use rand::{distributions::Standard, thread_rng, Rng};
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use super::*;
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#[test]
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fn test_kernel_matrix() {
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let kernel = Wiener::new(1.2, 0.0, 0.0);
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let ts = [1.26, 1.46, 2.67];
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assert_abs_diff_eq!(
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kernel.k_mat(&ts, None),
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array![
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[1.512, 1.512, 1.512],
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[1.512, 1.752, 1.752],
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[1.512, 1.752, 3.2039999999999997]
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]
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);
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}
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#[test]
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fn test_kernel_diag() {
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let kernel = Wiener::new(1.2, 0.0, 0.0);
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let ts: Vec<_> = thread_rng()
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.sample_iter::<f64, _>(Standard)
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.take(10)
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.map(|x| x * 10.0)
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.collect();
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assert_eq!(kernel.k_mat(&ts, None).diag(), kernel.k_diag(&ts));
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}
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#[test]
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fn test_kernel_order() {
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let kernel = Wiener::new(1.2, 0.0, 0.0);
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let m = kernel.order();
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assert_eq!(kernel.state_mean(0.0).shape(), &[m]);
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assert_eq!(kernel.state_cov(0.0).shape(), &[m, m]);
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assert_eq!(kernel.measurement_vector().shape(), &[m]);
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assert_eq!(kernel.feedback().shape(), &[m, m]);
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assert_eq!(kernel.noise_effect().shape()[0], m);
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assert_eq!(kernel.transition(0.0, 1.0).shape(), &[m, m]);
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assert_eq!(kernel.noise_cov(0.0, 1.0).shape(), &[m, m]);
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}
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#[test]
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fn test_ssm_variance() {
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let kernel = Wiener::new(1.2, 0.0, 0.0);
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let ts: Vec<_> = thread_rng()
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.sample_iter::<f64, _>(Standard)
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.take(10)
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.map(|x| x * 10.0)
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.collect();
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let h = kernel.measurement_vector();
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let vars = ts
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.iter()
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.map(|t| h.dot(&kernel.state_cov(*t)).dot(&h))
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.collect::<Vec<_>>();
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assert_abs_diff_eq!(Array::from(vars), kernel.k_diag(&ts));
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}
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}
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