Measurable function explained
In mathematics, and in particular measure theory, a measurable function is a function between the underlying sets of two measurable spaces that preserves the structure of the spaces: the preimage of any measurable set is measurable. This is in direct analogy to the definition that a continuous function between topological spaces preserves the topological structure: the preimage of any open set is open. In real analysis, measurable functions are used in the definition of the Lebesgue integral. In probability theory, a measurable function on a probability space is known as a random variable.
Formal definition
Let
and
be measurable spaces, meaning that
and
Y</Math>aresetsequippedwithrespective[[σ-algebra|<math>\sigma
-algebras]]
and
A function
is said to be measurable if for every
the pre-image of
under
is in
; that is, for all
That is,
\sigma(f)\subseteq\Sigma,
where
is the σ-algebra generated by f. If
is a measurable function, one writes
to emphasize the dependency on the
-algebras
and
Term usage variations
The choice of
-algebras in the definition above is sometimes implicit and left up to the context. For example, for
or other topological spaces, the
Borel algebra (generated by all the open sets) is a common choice. Some authors define
measurable functions as exclusively real-valued ones with respect to the Borel algebra.
[1] If the values of the function lie in an infinite-dimensional vector space, other non-equivalent definitions of measurability, such as weak measurability and Bochner measurability, exist.
Notable classes of measurable functions
- Random variables are by definition measurable functions defined on probability spaces.
- If
and
are Borel spaces, a measurable function
is also called a
Borel function. Continuous functions are Borel functions but not all Borel functions are continuous. However, a measurable function is nearly a continuous function; see
Luzin's theorem. If a Borel function happens to be a section of a map
it is called a
Borel section.
f:(\R,l{L})\to(\Complex,l{B}\Complex),
where
is the
-algebra of Lebesgue measurable sets, and
is the
Borel algebra on the
complex numbers
Lebesgue measurable functions are of interest in
mathematical analysis because they can be integrated. In the case
is Lebesgue measurable if and only if
\{f>\alpha\}=\{x\inX:f(x)>\alpha\}
is measurable for all
This is also equivalent to any of
\{f\geq\alpha\},\{f<\alpha\},\{f\le\alpha\}
being measurable for all
or the preimage of any open set being measurable. Continuous functions, monotone functions, step functions, semicontinuous functions, Riemann-integrable functions, and functions of bounded variation are all Lebesgue measurable.
[2] A function
is measurable if and only if the real and imaginary parts are measurable.
Properties of measurable functions
- The sum and product of two complex-valued measurable functions are measurable.[3] So is the quotient, so long as there is no division by zero.
- If
f:(X,\Sigma1)\to(Y,\Sigma2)
and
g:(Y,\Sigma2)\to(Z,\Sigma3)
are measurable functions, then so is their composition
g\circf:(X,\Sigma1)\to(Z,\Sigma3).
f:(X,\Sigma1)\to(Y,\Sigma2)
and
g:(Y,\Sigma3)\to(Z,\Sigma4)
are measurable functions, their composition
need not be
-measurable unless
Indeed, two Lebesgue-measurable functions may be constructed in such a way as to make their composition non-Lebesgue-measurable.
- The (pointwise) supremum, infimum, limit superior, and limit inferior of a sequence (viz., countably many) of real-valued measurable functions are all measurable as well.[4]
- The pointwise limit of a sequence of measurable functions
is measurable, where
is a metric space (endowed with the Borel algebra). This is not true in general if
is non-metrizable. The corresponding statement for continuous functions requires stronger conditions than pointwise convergence, such as uniform convergence.
[5] [6] Non-measurable functions
Real-valued functions encountered in applications tend to be measurable; however, it is not difficult to prove the existence of non-measurable functions. Such proofs rely on the axiom of choice in an essential way, in the sense that Zermelo–Fraenkel set theory without the axiom of choice does not prove the existence of such functions.
In any measure space
with a non-measurable set
one can construct a non-measurable indicator function: where
is equipped with the usual Borel algebra. This is a non-measurable function since the preimage of the measurable set
is the non-measurable
As another example, any non-constant function
is non-measurable with respect to the trivial
-algebra
\Sigma=\{\varnothing,X\},
since the preimage of any point in the range is some proper, nonempty subset of
which is not an element of the trivial
See also
- - Vector spaces of measurable functions: the
spaces
External links
Notes and References
- Book: Strichartz, Robert. The Way of Analysis. registration. Jones and Bartlett. 2000. 0-7637-1497-6.
- Book: Carothers, N. L.. Real Analysis. registration . 2000. Cambridge University Press. 0-521-49756-6.
- Book: Folland, Gerald B.. Real Analysis: Modern Techniques and their Applications. 1999. Wiley. 0-471-31716-0.
- Book: Royden, H. L.. Real Analysis. 1988. Prentice Hall. 0-02-404151-3.
- Book: Dudley, R. M.. Real Analysis and Probability. 2002. 2. Cambridge University Press. 0-521-00754-2.
- Book: Aliprantis. Charalambos D.. Border. Kim C.. Infinite Dimensional Analysis, A Hitchhiker's Guide. 2006. 3. Springer. 978-3-540-29587-7.