Newton Polynomial

In the mathematical subfield of numerical analysis, a Newton polynomial, named after its inventor Isaac Newton, is the interpolation polynomial for a given set of data points in the Newton form. The Newton polynomial is sometimes called Newton's divided differences interpolation polynomial because the coefficients of the polynomial are calculated using divided differences. As there is only one interpolation polynomial for a given set of data points it is a bit misleading to call the polynomial Newton interpolation polynomial. The more precise name is interpolation polynomial in the Newton form.

Definition

Given a set of k+1 data points
(x_0, y_0),\ldots,(x_k, y_k)
where no two xj are the same, the interpolation polynomial in the Newton form is linear combination of Newton basis polynomials
N(x) := \sum_{j=0}^{k} a_{j} n_{j}(x)
with the Newton basis polynomials defined as
n_j(x) := \prod_{i=0}^{j-1} (x - x_i)
and the coefficients defined as
a_j := y_0,\ldots,y_j
where
y_0,\ldots,y_j
is the notation for divided differences. Thus the Newton polynomial can be written as
N(x) := y_0 + y_0,y_1(x-x_0) + \ldots + y_0,\ldots,y_k(x-x_0)\ldots(x-x_{k-1})

Main idea

Solving an interpolation problems leads to a problem in linear algebra where we have to solve a matrix. Using a standard monomial basis for our interpolation polynomial we get the very complicated Vandermonde matrix. By choosing another basis, the Newton basis, we get a much simpler lower triangular matrix which can solved faster. For k+1 data points we construct the Newton basis as
n_j(x) := \prod_{i=0}^{j-1} (x - x_i) \qquad j=0,\ldots,k
Using the these polynomials as a basis for \Pi_k we have to solve
\begin{bmatrix}
       1 &         &        &        & 0  \\       1 & x_1-x_0 &        &        &    \\       1 & x_2-x_0 & (x_2-x_0)(x_2-x_1) &        &    \\  \vdots & \vdots  &        & \ddots &    \\       1 & x_k-x_0 & \ldots & \ldots & \prod_{j=0}^{k-1}(x_k - x_j) 
\end{bmatrix} \begin{bmatrix}
      a_0 \\      \vdots \\      a_{k}  
\end{bmatrix} = \begin{bmatrix}
      y_0 \\      \vdots \\      y_{k} 
\end{bmatrix} to solve the polynomial interpolation problem. This matrix can be solved recursively by solving
\sum_{i=0}^{j} a_{i} n_{i}(x_j) = y_j \qquad j = 0,...,k

Application

As can be seen from the definition of the divided differences new data points can be added to the data set to create a new interpolation polynomial without recalculation the old coefficients. And when a data point changes we usually do not have to recalculate all coefficients. Furthermore if the xi are distributed equidistantly the calculation of the divided differences becomes significantly easier. Therefore the Newton form of the interpolation polynomial is usually preferred over the Lagrange form for practical purposes.

See also

 

<< PreviousWord BrowserNext >>
jstor
rhythmic
xscape
orchidales
english coin three farthings
ribbon cable
nazca lines
isabel preysler
truth hurts
conception
anita borg
irv gotti
japan post and postal services agency
lil' mo
part ii
amongst barbarians
the small house at allington
majority
eva marie saint
the country wife
soyuz tma 2
chicken & beer
adt
h. s. m. coxeter
excuse
duress
bulbophyllum beccarii
jos rizal
bank robbery
alcorn state university
groundsel
defense of infancy
giant's causeway
quebec (album)
elasticity
sylvia beach
price elasticity of demand
weed of cultivation
sky news
income elasticity of demand
robert solow
food security
biosphere 2
uss shiloh (cg 67)