(Redirected from Measurable)In
mathematics the concept of a 'measure' generalizes notions such as "length", "area", and "volume" (but not all of its applications have to do with physical sizes). Informally, given some base
set, a "measure" is any consistent assignment of "sizes" to (some of) the
subsets of the base set. Depending on the application, the "size" of a subset may be interpreted as (for example) its physical size, the amount of something that lies within the subset, or the probability that some random process will yield a result within the subset. The main use of measures is to define general concepts of
integration over domains with more complex structure than intervals of the real line. Such integrals are used extensively in
probability theory, and in much of
mathematical analysis.
It is often not possible or desirable to assign a size to ''all'' subsets of the base set, so a measure does not have to do so. There are certain consistency conditions that govern which combinations of subsets it is allowed for a measure to assign sizes to; these conditions are encapsulated in the auxiliary concept of a
σ-algebra.
'Measure theory' is that branch of
real analysis which investigates
σ-algebras, measures,
measurable functions and
integrals.

Informally, a measure maps sets to non-negative real numbers, with larger sets being mapped to bigger numbers.
Definition
Formally, a measure μ is a
function defined on a
σ-algebra Σ over a set ''X'' and taking values in the
extended interval [0,∞] such that the following properties are satisfied:
★ The
empty set has
measure zero:
:
.
★ ''Countable additivity'' or
σ-''additivity'''':'' if
... is a
countable sequence of pairwise
disjoint sets in
, the measure of the union of all the
's is equal to the sum of the measures of each
:
:
The
triple (''X'',Σ,μ) is then called a 'measure space', and the members of Σ are called 'measurable sets'.
A 'probability measure' is a measure with total measure one (i.e., μ(''X'')=1); a
probability space is a measure space with a probability measure.
For measure spaces that are also
topological spaces various compatibility conditions can be placed for the measure and the topology. Most measures met in practice in
analysis (and in many cases also in
probability theory) are
Radon measures. Radon measures have an alternative definition in terms of linear functionals on the
locally convex space of
continuous functions with
compact support. This approach is taken by Bourbaki(2004) and a number of other authors. For more details see
Radon measure.
Properties
Several further properties can be derived from the definition of a countably additive measure.
Monotonicity
is
monotonic: If
and
are measurable sets with
then
.
Measures of infinite unions of measurable sets
is
subadditive: If
,
,
, ... is a
countable sequence of sets in
, not necessarily disjoint, then
:
.
is continuous from below: If
,
,
, ... are measurable sets and
is a subset of
for all ''n'', then the
union of the sets
is measurable, and
:
.
Measures of infinite intersections of measurable sets
is continuous from above: If
,
,
, ... are measurable sets and
is a subset of
for all ''n'', then the
intersection of the sets
is measurable; furthermore, if at least one of the
has finite measure, then
:
.
This property is false without the assumption that at least one of the
has finite measure. For instance, for each ''n'' ∈ 'N', let
:
which all have infinite measure, but the intersection is empty.
Sigma-finite measures
:
Main articles: Sigma-finite measure
A measure space (''X'',Σ,μ) is called finite if μ(''X'') is a finite real number (rather than ∞). It is called ''σ-finite'' if ''X'' can be decomposed into a countable union of measurable sets of finite measure. A set in a measure space has ''σ-finite measure'' if it is a union of sets with finite measure.
For example, the
real numbers with the standard
Lebesgue measure are σ-finite but not finite. Consider the
closed intervals [''k'',''k''+1] for all
integers ''k''; there are countably many such intervals, each has measure 1, and their union is the entire real line. Alternatively, consider the
real numbers with the
counting measure, which assigns to each finite set of reals the number of points in the set. This measure space is not σ-finite, because every set with finite measure contains only finitely many points, and it would take uncountably many such sets to cover the entire real line. The σ-finite measure spaces have some very convenient properties; σ-finiteness can be compared in this respect to
separability of topological spaces.
Completeness
A measurable set ''X'' is called a ''null set'' if μ(''X'')=0. A subset of a null set is called a ''negligible set''. A negligible set need not be measurable, but every measurable negligible set is automatically a null set. A measure is called ''complete'' if every negligible set is measurable.
A measure can be extended to a complete one by considering the σ-algebra of subsets ''Y'' which differ by a negligible set from a measurable set ''X'', that is, such that the
symmetric difference of ''X'' and ''Y'' is contained in a null set. One defines μ(''Y'') to equal μ(''X'').
Examples
Some important measures are listed here.
★ The
counting measure is defined by μ(''S'') = number of elements in ''S''.
★ The
Lebesgue measure is the unique complete translation-invariant measure on a ''σ''-algebra containing the
intervals in 'R' such that μ([0,1]) = 1.
★ Circular
angle measure is invariant under
rotation.
★ The
Haar measure for a
locally compact topological group is a generalization of the Lebesgue measure and has a similar uniqueness property.
★ The
Hausdorff measure which is a refinement of the Lebesgue measure to some fractal sets.
★ Every probability space gives rise to a measure which takes the value 1 on the whole space (and therefore takes all its values in the
unit interval [0,1]). Such a measure is called a ''probability measure''. See
probability axioms.
★ The Dirac measure
(confer
Dirac delta function) is given by
, where
is the
characteristic function of ''S''. The measure of a set is 1 if it contains the point ''a'' and 0 otherwise.
Other measures include:
Borel measure,
Jordan measure,
Ergodic measure,
Euler measure,
Gauss measure,
Baire measure,
Radon measure.
Non-measurable sets
:
Main articles: Non-measurable set
Not all subsets of
Euclidean space are
Lebesgue measurable; examples of such sets include the
Vitali set, and the non-measurable sets postulated by the
Hausdorff paradox and the
Banach–Tarski paradox.
Generalizations
For certain purposes, it is useful to have a "measure" whose values are not restricted to the non-negative reals or infinity. For instance, a countably additive set function with values in the (signed) real numbers is called a ''
signed measure'', while such a function with values in the
complex numbers is called a ''
complex measure''. Measures that take values in
Banach spaces have been studied extensively. A measure that takes values in the set of self-adjoint projections on a
Hilbert space is called a ''
projection-valued measure''; these are used mainly in
functional analysis for the
spectral theorem. When it is necessary to distinguish the usual measures which take non-negative values from generalizations, the term "positive measure" is used.
Another generalization is the ''finitely additive measure''. This is the same as a measure except that instead of requiring countable additivity we require only finite additivity. Historically, this definition was used first, but proved to be not so useful. It turns out that in general, finitely additive measures are connected with notions such as
Banach limits, the dual of
''L''∞ and the
Stone-ÄŒech compactification. All these are linked in one way or another to the
axiom of choice.
The remarkable result in
integral geometry known as
Hadwiger's theorem states that the space of translation-invariant, finitely additive, not-necessarily-nonnegative set functions defined on
finite unions of compact
convex sets in
consists (up to scalar multiples) of one "measure" that is "homogeneous of degree ''k''" for each ''k=0,1,2,...,n'', and linear combinations of those "measures". "Homogeneous of degree ''k''" means that rescaling any set by any factor
multiplies the set's "measure" by
. The one that is homogeneous of degree ''n'' is the ordinary ''n''-dimensional volume. The one that is homogeneous of degree ''n-1'' is the "surface volume". The one that is homogeneous of degree 1 is a mysterious function called the "mean width", a misnomer. The one that is homogeneous of degree 0 is the
Euler characteristic.
See also
★
Outer measure
★
Inner measure
★
Hausdorff measure
★
Product measure
★
Pushforward measure
★
Lebesgue measure
★
Vector measure
★
Almost everywhere
★
Lebesgue integration
★
Caratheodory extension theorem
★
Measurable function
★
Steinhaus theorem
★
Geometric measure theory
References
★ Chapter III.
★ R. M. Dudley, 2002. ''Real Analysis and Probability''. Cambridge University Press.
★ Second edition.
★ D. H. Fremlin, 2000. ''
Measure Theory''. Torres Fremlin.
★
Paul Halmos, 1950. ''Measure theory''. Van Nostrand and Co.
★
R. Duncan Luce and Louis Narens (1987). "measurement, theory of," ''The '', v. 3, pp. 428-32.
★ M. E. Munroe, 1953. ''Introduction to Measure and Integration''. Addison Wesley.
★ Shilov, G. E., and Gurevich, B. L., 1978. ''Integral, Measure, and Derivative: A Unified Approach'', Richard A. Silverman, trans. Dover Publications. ISBN 0-486-63519-8. Emphasizes the
Daniell integral.
★ Some useful Cambridge
Tripos Notes on Probability and Measure Theory
link