How do you compare and contrast Lagrange and Newton interpolation methods?

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Numerical methods for interpolation are useful for finding approximate values of a function at points where it is not given or known. Interpolation methods can also help to smooth noisy data, visualize trends, and solve differential equations. Two common interpolation methods are Lagrange and Newton, which are based on different ways of constructing polynomial functions that pass through a given set of data points. In this article, you will learn how to compare and contrast Lagrange and Newton interpolation methods, and when to use them for your numerical analysis problems.

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