- Aitken's delta-squared process
In
numerical analysis , Aitken's delta-squared process is aseries acceleration method, used for accelerating therate of convergence of a sequence. It is named afterAlexander Aitken , who introduced this method in 1926 [Alexander Aitken, "On Bernoulli's numerical solution of algebraic equations", "Proceedings of the Royal Society of Edinburgh" (1926) 46 pp. 289-305.] . It is most useful for accelerating the convergence of a sequence that is converging linearly.Definition
Given a sequence , one associates to this sequence the new sequence
:
which can also be written as
: with
(To use this nice operator notation, one has to allow for the indices to start from "n" = 2 on, or apply a translation operator which first shifts the sequence indices by two, or to adopt the convention that "xn" = 0 for all "n" < 0.)
Obviously, "Ax" is ill-defined if Δ²x contains a zero element, or equivalently, if the sequence of
first difference s has a repeating term. From a theoretical point of view, assuming that this occurs only for a finite number of indices, one could easily agree to consider the sequence "Ax" restricted to indices "n>n0" with a sufficiently large "n0". From a practical point of view, one does in general rather consider only the first few terms of the sequence, which usually provide the needed precision. Moreover, when numerically computing the sequence, one has to take care to stop the computation whenrounding error s become too important in the denominator, where the Δ² operation may cancel too manysignificant digit s.Properties
Aitken's delta-squared process is a method of
acceleration of convergence , and a particular case of a nonlinearsequence transformation .When converges linearly to , then
is not a linear operator, but a constant term drops out, viz: , if is a constant. This is clear from the expression of in terms of the
finite difference operator .Although the new process does not in general converge quadratically, it can be shown that for a
fixed point process, that is, for aniterated function sequence for some function , converging to a fixed point, the convergence is quadratic. In this case, the technique is known asSteffensen's method .Empirically, the A-operation eliminates the "most important error term". One can check this by considering a sequence of the form , where
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