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Algorithm Implementation/Mathematics/Polynomial interpolation

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Lagrange interpolation is an algorithm which returns the polynomial of minimum degree which passes through a given set of points (xi, yi).

Algorithm

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Given the n points (x0, y0), ..., (xn-1, yn-1), compute the Lagrange polynomial . Note that the ith term in the sum, is constructed so that when xj is substituted for x to have a value of zero whenever ji, and a value of yj whenever j = i. The resulting Lagrange polynomial is the sum of these terms, so has a value of p(xj) = 0 + 0 + ... + yj + ... + 0 = yj for each of the specified points (xj, yj).

In both the pseudocode and each implementation below, the polynomial p(x) = a0 + a1x + a2x2 + ... + an-1xn-1 is represented as an array of it's coefficients, (a0, a1, a2, ..., an-1).

Pseudocode

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algorithm lagrange-interpolate is
    input: points (x0, y0), ..., (xn-1, yn-1) 
    output: Polynomial p such that p(x) passes through the input points and is of minimal degree

    for each point (xi, yi) do
        compute tmp := 
        compute term := tmp*          

    return p, the sum of the values of term

In sample implementations below, the polynomial p(x) = a0 + a1x + a2x2 + ... + an-1xn-1 is represented as an array of it's coefficients, (a0, a1, a2, ..., an-1).

While the code is written to expect points taken from the real numbers (aka floating point), returning a polynomial with coefficients in the reals, this basic algorithm can be adapted to work with inputs and polynomial coefficients from any field, such as the complex numbers, integers mod a prime or finite fields.

#include <stdio.h>
#include <stdlib.h>

// input: numpts, xval, yval
// output: thepoly
void interpolate(int numpts, const float xval[restrict numpts], const float yval[restrict numpts],
    float thepoly[numpts])
{
    float theterm[numpts];
    float prod;
    int i, j, k;
    for (i = 0; i < numpts; i++)
        thepoly[i] = 0.0;
    for (i = 0; i < numpts; i++) {
        prod = 1.0;
        for (j = 0; j < numpts; j++) {
            theterm[j] = 0.0;
        };
        // Compute Prod_{j != i} (x_i - x_j)
        for (j = 0; j < numpts; j++) {
            if (i == j)
                continue;
            prod *= (xval[i] - xval[j]);
        };
        // Compute y_i/Prod_{j != i} (x_i - x_j)
        prod = yval[i] / prod;
        theterm[0] = prod;
        // Compute theterm := prod*Prod_{j != i} (x - x_j)
        for (j = 0; j < numpts; j++) {
            if (i == j)
                continue;
            for (k = numpts - 1; k > 0; k--) {
                theterm[k] += theterm[k - 1];
                theterm[k - 1] *= (-xval[j]);
            };
        };
        // thepoly += theterm (as coeff vectors)
        for (j = 0; j < numpts; j++) {
            thepoly[j] += theterm[j];
        };
    };
}

Python

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from typing import Tuple, List

def interpolate(inpts: List[Tuple[float, float]]) -> List[float]:
    n = len(inpts)
    thepoly = n * [0.0]
    for i in range(n):
        prod = 1.0
        # Compute Prod_{j != i} (x_i - x_j)
        for j in (j for j in range(n) if (j != i)):
            prod *= (inpts[i][0] - inpts[j][0])
        # Compute y_i/Prod_{j != i} (x_i - x_j)
        prod = inpts[i][1] / prod
        theterm = [prod] + (n - 1) * [0]
        # Compute theterm := prod*Prod_{j != i} (x - x_j)
        for j in (j for j in range(n) if (j != i)):
            for k in range(n - 1, 0, -1):
                theterm[k] += theterm[k - 1]
                theterm[k - 1] *= (-inpts[j][0])
        # thepoly += theterm
        for j in range(n):
            thepoly[j] += theterm[j]
    return thepoly