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new: Added inverse method
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parent
e9b21e330c
commit
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2 changed files with 107 additions and 4 deletions
90
src/lib.rs
90
src/lib.rs
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@ -2,6 +2,7 @@
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//! with any type that implement [`Add`], [`Sub`], [`Mul`],
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//! [`Zero`], [`Neg`] and [`Copy`]. Additional properties might be
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//! needed for certain operations.
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//!
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//! I created it mostly to learn using generic types
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//! and traits.
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//!
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@ -184,7 +185,7 @@ impl<T: ToMatrix> Matrix<T> {
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/// ```
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/// use matrix_basic::Matrix;
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/// let m = Matrix::from(vec![vec![1.0, 2.0], vec![3.0, 4.0]]).unwrap();
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/// assert_eq!(m.det(), Ok(-2.0));
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/// assert_eq!(m.det_in_field(), Ok(-2.0));
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/// ```
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pub fn det_in_field(&self) -> Result<T, &'static str>
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where
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@ -198,14 +199,14 @@ impl<T: ToMatrix> Matrix<T> {
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let mut multiplier = T::one();
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let h = self.height();
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let w = self.width();
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for i in 0..h {
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for i in 0..(h - 1) {
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// First check if the row has diagonal element 0, if yes, then swap.
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if rows[i][i] == T::zero() {
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let mut zero_column = true;
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for j in (i + 1)..h {
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if rows[j][i] != T::zero() {
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rows.swap(i, j);
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multiplier = T::zero() - multiplier;
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multiplier = -multiplier;
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zero_column = false;
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break;
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}
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@ -248,7 +249,7 @@ impl<T: ToMatrix> Matrix<T> {
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let mut offset = 0;
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let h = self.height();
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let w = self.width();
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for i in 0..h {
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for i in 0..(h - 1) {
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// Check if all the rows below are 0
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if i + offset >= self.width() {
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break;
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@ -399,6 +400,87 @@ impl<T: ToMatrix> Matrix<T> {
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}
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}
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/// Returns the inverse of a square matrix. Throws an error if the matrix isn't square.
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/// /// # Example
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/// ```
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/// use matrix_basic::Matrix;
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/// let m = Matrix::from(vec![vec![1.0, 2.0], vec![3.0, 4.0]]).unwrap();
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/// let n = Matrix::from(vec![vec![-2.0, 1.0], vec![1.5, -0.5]]).unwrap();
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/// assert_eq!(m.inverse(), Ok(n));
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/// ```
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pub fn inverse(&self) -> Result<Self, &'static str>
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where
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T: Div<Output = T>,
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T: One,
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T: PartialEq,
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{
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if self.is_square() {
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// We'll use the basic technique of using an augmented matrix (in essence)
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// Cloning is necessary as we'll be doing row operations on it.
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let mut rows = self.entries.clone();
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let h = self.height();
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let w = self.width();
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let mut out = Self::identity(h).entries;
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// First we get row echelon form
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for i in 0..(h - 1) {
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// First check if the row has diagonal element 0, if yes, then swap.
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if rows[i][i] == T::zero() {
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let mut zero_column = true;
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for j in (i + 1)..h {
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if rows[j][i] != T::zero() {
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rows.swap(i, j);
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out.swap(i, j);
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zero_column = false;
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break;
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}
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}
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if zero_column {
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return Err("Provided matrix is singular.");
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}
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}
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for j in (i + 1)..h {
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let ratio = rows[j][i] / rows[i][i];
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for k in i..w {
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rows[j][k] = rows[j][k] - rows[i][k] * ratio;
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}
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// We cannot skip entries here as they might not be 0
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for k in 0..w {
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out[j][k] = out[j][k] - out[i][k] * ratio;
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}
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}
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}
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// Then we reduce the rows
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for i in 0..h {
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if rows[i][i] == T::zero() {
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return Err("Provided matrix is singular.");
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}
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let divisor = rows[i][i];
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for entry in rows[i].iter_mut().skip(i) {
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*entry = *entry / divisor;
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}
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for entry in out[i].iter_mut() {
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*entry = *entry / divisor;
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}
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}
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// Finally, we do upside down row reduction
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for i in (1..h).rev() {
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for j in (0..i).rev() {
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let ratio = rows[j][i];
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for k in 0..w {
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out[j][k] = out[j][k] - out[i][k] * ratio;
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}
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}
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}
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Ok(Matrix { entries: out })
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} else {
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Err("Provided matrix isn't square.")
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}
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}
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// TODO: Canonical forms, eigenvalues, eigenvectors etc.
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}
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21
src/tests.rs
21
src/tests.rs
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@ -78,3 +78,24 @@ fn conversion_test() {
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let c = Matrix::<f64>::matrix_from(a);
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assert_eq!(c, b);
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}
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#[test]
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fn inverse_test() {
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let a = Matrix::from(vec![vec![1.0, 2.0], vec![1.0, 2.0]]).unwrap();
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let b = Matrix::from(vec![
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vec![1.0, 2.0, 3.0],
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vec![0.0, 1.0, 4.0],
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vec![5.0, 6.0, 0.0],
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])
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.unwrap();
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let c = Matrix::from(vec![
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vec![-24.0, 18.0, 5.0],
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vec![20.0, -15.0, -4.0],
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vec![-5.0, 4.0, 1.0],
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])
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.unwrap();
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println!("{:?}", a.inverse());
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assert!(a.inverse().is_err());
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assert_eq!(b.inverse(), Ok(c));
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}
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