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In [[mathematics]], a '''fixed-point theorem''' is a result saying that a [[function (mathematics)|function]] ''F'' will have at least one [[fixed point (mathematics)|fixed point]] (a point ''x'' for which ''F''(''x'')=''x''), under some conditions on ''F'' that can be stated in general terms.<ref> {{cite book
In [[mathematics]], a '''fixed-point theorem''' is a result saying that a [[function (mathematics)|function]] ''F'' will have at least one [[fixed point (mathematics)|fixed point]] (a point ''x'' for which ''F''(''x'') = ''x''), under some conditions on ''F'' that can be stated in general terms.<ref> {{cite book
| author = Brown, R. F. (Ed.)
| author = Brown, R. F. (Ed.)
| title = Fixed Point Theory and Its Applications
| title = Fixed Point Theory and Its Applications

Revision as of 19:06, 20 February 2015

In mathematics, a fixed-point theorem is a result saying that a function F will have at least one fixed point (a point x for which F(x) = x), under some conditions on F that can be stated in general terms.[1] Results of this kind are amongst the most generally useful in mathematics.[2]

In mathematical analysis

The Banach fixed-point theorem gives a general criterion guaranteeing that, if it is satisfied, the procedure of iterating a function yields a fixed point.[3]

By contrast, the Brouwer fixed-point theorem is a non-constructive result: it says that any continuous function from the closed unit ball in n-dimensional Euclidean space to itself must have a fixed point,[4] but it doesn't describe how to find the fixed point (See also Sperner's lemma).

For example, the cosine function is continuous in [−1,1] and maps it into [−1, 1], and thus must have a fixed point. This is clear when examining a sketched graph of the cosine function; the fixed point occurs where the cosine curve y=cos(x) intersects the line y=x. Numerically, the fixed point is approximately x=0.73908513321516 (thus x=cos(x) for this value of x).

The Lefschetz fixed-point theorem[5] (and the Nielsen fixed-point theorem)[6] from algebraic topology is notable because it gives, in some sense, a way to count fixed points.

There are a number of generalisations to Banach fixed-point theorem and further; these are applied in PDE theory. See fixed-point theorems in infinite-dimensional spaces.

The collage theorem in fractal compression proves that, for many images, there exists a relatively small description of a function that, when iteratively applied to any starting image, rapidly converges on the desired image.[7]

In algebra and discrete mathematics

The Knaster–Tarski theorem states that any order-preserving function on a complete lattice has a fixed point, and indeed a smallest fixed point.[8] See also Bourbaki–Witt theorem.

The theorem has applications in abstract interpretation, a form of static program analysis.

A common theme in lambda calculus is to find fixed points of given lambda expressions. Every lambda expression has a fixed point, and a fixed-point combinator is a "function" which takes as input a lambda expression and produces as output a fixed point of that expression.[9] An important fixed-point combinator is the Y combinator used to give recursive definitions.

In denotational semantics of programming languages, a special case of the Knaster–Tarski theorem is used to establish the semantics of recursive definitions. While the fixed-point theorem is applied to the "same" function (from a logical point of view), the development of the theory is quite different.

The same definition of recursive function can be given, in computability theory, by applying Kleene's recursion theorem.[10] These results are not equivalent theorems; the Knaster–Tarski theorem is a much stronger result than what is used in denotational semantics.[11] However, in light of the Church–Turing thesis their intuitive meaning is the same: a recursive function can be described as the least fixed point of a certain functional, mapping functions to functions.

The above technique of iterating a function to find a fixed point can also be used in set theory; the fixed-point lemma for normal functions states that any continuous strictly increasing function from ordinals to ordinals has one (and indeed many) fixed points.

Every closure operator on a poset has many fixed points; these are the "closed elements" with respect to the closure operator, and they are the main reason the closure operator was defined in the first place.

List of fixed point theorems

Footnotes

  1. ^ Brown, R. F. (Ed.) (1988). Fixed Point Theory and Its Applications. American Mathematical Society. ISBN 0-8218-5080-6.
  2. ^ Dugundji, James; Granas, Andrzej (2003). Fixed Point Theory. Springer-Verlag. ISBN 0-387-00173-5.{{cite book}}: CS1 maint: multiple names: authors list (link)
  3. ^ Giles, John R. (1987). Introduction to the Analysis of Metric Spaces. Cambridge University Press. ISBN 978-0521359283.
  4. ^ Eberhard Zeidler, Applied Functional Analysis: main principles and their applications, Springer, 1995.
  5. ^ Solomon Lefschetz (1937). "On the fixed point formula". Ann. of Math. 38 (4): 819–822. doi:10.2307/1968838.
  6. ^ Fenchel, Werner (2003). Discontinuous groups of isometries in the hyperbolic plane. De Gruyter Studies in mathematics. Vol. 29. Berlin: Walter de Gruyter & Co. {{cite book}}: Check |first= value (help); Unknown parameter |coauthors= ignored (|author= suggested) (help)
  7. ^ Barnsley, Michael. (1988). Fractals Everywhere. Academic Press, Inc. ISBN 0-12-079062-9.
  8. ^ Alfred Tarski (1955). "A lattice-theoretical fixpoint theorem and its applications". Pacific Journal of Mathematics. 5:2: 285–309.
  9. ^ Peyton Jones, Simon L. (1987). The Implementation of Functional Programming. Prentice Hall International.
  10. ^ Cutland, N.J., Computability: An introduction to recursive function theory, Cambridge University Press, 1980. ISBN 0-521-29465-7
  11. ^ The foundations of program verification, 2nd edition, Jacques Loeckx and Kurt Sieber, John Wiley & Sons, ISBN 0-471-91282-4, Chapter 4; theorem 4.24, page 83, is what is used in denotational semantics, while Knaster–Tarski theorem is given to prove as exercise 4.3–5 on page 90.

References

  • Agarwal, Ravi P.; Meehan, Maria; O'Regan, Donal (2001). Fixed Point Theory and Applications. Cambridge University Press. ISBN 0-521-80250-4.{{cite book}}: CS1 maint: multiple names: authors list (link)
  • Aksoy, Asuman; Khamsi, Mohamed A. (1990). Nonstandard Methods in fixed point theory. Springer Verlag. ISBN 0-387-97364-8.{{cite book}}: CS1 maint: multiple names: authors list (link)
  • Berinde, Vasile (2005). Iterative Approximation of Fixed Point. Springer Verlag. ISBN 978-3-540-72233-5.
  • Border, Kim C. (1989). Fixed Point Theorems with Applications to Economics and Game Theory. Cambridge University Press. ISBN 0-521-38808-2.
  • Kirk, William A.; Goebel, Kazimierz (1990). Topics in Metric Fixed Point Theory. Cambridge University Press. ISBN 0-521-38289-0.{{cite book}}: CS1 maint: multiple names: authors list (link)
  • Kirk, William A.; Khamsi, Mohamed A. (2001). An Introduction to Metric Spaces and Fixed Point Theory. John Wiley, New York. ISBN 978-0-471-41825-2.{{cite book}}: CS1 maint: multiple names: authors list (link)
  • Kirk, William A.; Sims, Brailey (2001). Handbook of Metric Fixed Point Theory. Springer-Verlag. ISBN 0-7923-7073-2.{{cite book}}: CS1 maint: multiple names: authors list (link)
  • Šaškin, Jurij A; Minachin, Viktor; Mackey, George W. (1991). Fixed Points. American Mathematical Society. ISBN 0-8218-9000-X.{{cite book}}: CS1 maint: multiple names: authors list (link)

External links