Fixed-point iteration


In numerical analysis, fixed-point iteration is a method of computing fixed points of iterated functions.
More specifically, given a function defined on the real numbers with real values and given a point in the domain of, the fixed point iteration is
which gives rise to the sequence which is hoped to converge to a point. If is continuous, then one can prove that the obtained is a fixed point of, i.e.,
More generally, the function can be defined on any metric space with values in that same space.

Examples

and so its speed of convergence is very slow.
converges to 0 for all values of .
However, 0 is not a fixed point of the function
as this function is not continuous at, and in fact has no fixed points.

Applications

If a function defined on the real line with real values is Lipschitz continuous with Lipschitz constant, then this function has precisely one fixed point, and the fixed-point iteration converges towards that fixed point for any initial guess This theorem can be generalized to any metric space.
Proof of this theorem:
Since is Lipschitz continuous with Lipschitz constant, then for the sequence, we have:
and
Combining the above inequalities yields:
Since, as
Therefore, we can show is a Cauchy sequence and thus it converges to a point.
For the iteration, let go to infinity on both sides of the equation, we obtain. This shows that is the fixed point for. So we proved the iteration will eventually converge to a fixed-point.
This property is very useful because not all iterations can arrive at a convergent fixed-point. When constructing a fixed-point iteration, it is very important to make sure it converges. There are several fixed-point theorems to guarantee the existence of the fixed point, but since the iteration function is continuous, we can usually use the above theorem to test if an iteration converges or not. The proof of the generalized theorem to metric space is similar.

Convergence acceleration

The speed of convergence of the iteration sequence can be increased by using a convergence acceleration method such as Aitken's delta-squared process. The application of Aitken's method to fixed-point iteration is known as Steffensen's method, and it can be shown that Steffensen's method yields a rate of convergence that is at least quadratic.