In numerical analysis, the Shanks transformation is a non-linear series acceleration method to increase the rate of convergence of a sequence. This method is named after Daniel Shanks, who rediscovered this sequence transformation in 1955. It was first derived and published by R. Schmidt in 1941.[1]

One can calculate only a few terms of a perturbation expansion, usually no more than two or three, and almost never more than seven. The resulting series is often slowly convergent, or even divergent. Yet those few terms contain a remarkable amount of information, which the investigator should do his best to extract.
This viewpoint has been persuasively set forth in a delightful paper by Shanks (1955), who displays a number of amazing examples, including several from fluid mechanics.

Milton D. Van Dyke (1975) Perturbation methods in fluid mechanics, p. 202.

Formulation edit

For a sequence   the series

 

is to be determined. First, the partial sum   is defined as:

 

and forms a new sequence  . Provided the series converges,   will also approach the limit   as   The Shanks transformation   of the sequence   is the new sequence defined by[2][3]

 

where this sequence   often converges more rapidly than the sequence   Further speed-up may be obtained by repeated use of the Shanks transformation, by computing     etc.

Note that the non-linear transformation as used in the Shanks transformation is essentially the same as used in Aitken's delta-squared process so that as with Aitken's method, the right-most expression in  's definition (i.e.  ) is more numerically stable than the expression to its left (i.e.  ). Both Aitken's method and the Shanks transformation operate on a sequence, but the sequence the Shanks transformation operates on is usually thought of as being a sequence of partial sums, although any sequence may be viewed as a sequence of partial sums.

Example edit

 
Absolute error as a function of   in the partial sums   and after applying the Shanks transformation once or several times:     and   The series used is   which has the exact sum  

As an example, consider the slowly convergent series[3]

 

which has the exact sum π ≈ 3.14159265. The partial sum   has only one digit accuracy, while six-figure accuracy requires summing about 400,000 terms.

In the table below, the partial sums  , the Shanks transformation   on them, as well as the repeated Shanks transformations   and   are given for   up to 12. The figure to the right shows the absolute error for the partial sums and Shanks transformation results, clearly showing the improved accuracy and convergence rate.

         
0 4.00000000
1 2.66666667 3.16666667
2 3.46666667 3.13333333 3.14210526
3 2.89523810 3.14523810 3.14145022 3.14159936
4 3.33968254 3.13968254 3.14164332 3.14159086
5 2.97604618 3.14271284 3.14157129 3.14159323
6 3.28373848 3.14088134 3.14160284 3.14159244
7 3.01707182 3.14207182 3.14158732 3.14159274
8 3.25236593 3.14125482 3.14159566 3.14159261
9 3.04183962 3.14183962 3.14159086 3.14159267
10 3.23231581 3.14140672 3.14159377 3.14159264
11 3.05840277 3.14173610 3.14159192 3.14159266
12 3.21840277 3.14147969 3.14159314 3.14159265

The Shanks transformation   already has two-digit accuracy, while the original partial sums only establish the same accuracy at   Remarkably,   has six digits accuracy, obtained from repeated Shank transformations applied to the first seven terms   As mentioned before,   only obtains 6-digit accuracy after summing about 400,000 terms.

Motivation edit

The Shanks transformation is motivated by the observation that — for larger   — the partial sum   quite often behaves approximately as[2]

 

with   so that the sequence converges transiently to the series result   for   So for     and   the respective partial sums are:

 

These three equations contain three unknowns:     and   Solving for   gives[2]

 

In the (exceptional) case that the denominator is equal to zero: then   for all  

Generalized Shanks transformation edit

The generalized kth-order Shanks transformation is given as the ratio of the determinants:[4]

 

with   It is the solution of a model for the convergence behaviour of the partial sums   with   distinct transients:

 

This model for the convergence behaviour contains   unknowns. By evaluating the above equation at the elements   and solving for   the above expression for the kth-order Shanks transformation is obtained. The first-order generalized Shanks transformation is equal to the ordinary Shanks transformation:  

The generalized Shanks transformation is closely related to Padé approximants and Padé tables.[4]

Note: The calculation of determinants requires many arithmetic operations to make, however Peter Wynn discovered a recursive evaluation procedure called epsilon-algorithm which avoids calculating the determinants.[5][6]

See also edit

Notes edit

  1. ^ Weniger (2003).
  2. ^ a b c Bender & Orszag (1999), pp. 368–375.
  3. ^ a b Van Dyke (1975), pp. 202–205.
  4. ^ a b Bender & Orszag (1999), pp. 389–392.
  5. ^ Wynn (1956)
  6. ^ Wynn (1962)

References edit

  • Shanks, D. (1955), "Non-linear transformation of divergent and slowly convergent sequences", Journal of Mathematics and Physics, 34 (1–4): 1–42, doi:10.1002/sapm19553411
  • Schmidt, R.J. (1941), "On the numerical solution of linear simultaneous equations by an iterative method", Philosophical Magazine, 32 (214): 369–383, doi:10.1080/14786444108520797
  • Van Dyke, M.D. (1975), Perturbation methods in fluid mechanics (annotated ed.), Parabolic Press, ISBN 0-915760-01-0
  • Bender, C.M.; Orszag, S.A. (1999), Advanced mathematical methods for scientists and engineers, Springer, ISBN 0-387-98931-5
  • Weniger, E.J. (1989). "Nonlinear sequence transformations for the acceleration of convergence and the summation of divergent series". Computer Physics Reports. 10 (5–6): 189–371. arXiv:math.NA/0306302. Bibcode:1989CoPhR..10..189W. doi:10.1016/0167-7977(89)90011-7.
  • Brezinski, C.; Redivo-Zaglia, M.; Saad, Y. (2018), "Shanks sequence transformations and Anderson acceleration", SIAM Review, 60 (3): 646–669, doi:10.1137/17M1120725, hdl:11577/3270110
  • Senhadji, M.N. (2001), "On condition numbers of the Shanks transformation", J. Comput. Appl. Math., 135 (1): 41–61, Bibcode:2001JCoAM.135...41S, doi:10.1016/S0377-0427(00)00561-6
  • Wynn, P. (1956), "On a device for computing the em(Sn) transformation", Mathematical Tables and Other Aids to Computation, 10 (54): 91–96, doi:10.2307/2002183, JSTOR 2002183
  • Wynn, P. (1962), "Acceleration techniques for iterated vector and matrix problems", Math. Comp., 16 (79): 301–322, doi:10.1090/S0025-5718-1962-0145647-X