In mathematics, especially measure theory, a set function is a function whose domain is a family of subsets of some given set and that (usually) takes its values in the extended real number line which consists of the real numbers and

A set function generally aims to measure subsets in some way. Measures are typical examples of "measuring" set functions. Therefore, the term "set function" is often used for avoiding confusion between the mathematical meaning of "measure" and its common language meaning.

Definitions edit

If   is a family of sets over   (meaning that   where   denotes the powerset) then a set function on   is a function   with domain   and codomain   or, sometimes, the codomain is instead some vector space, as with vector measures, complex measures, and projection-valued measures. The domain of a set function may have any number properties; the commonly encountered properties and categories of families are listed in the table below.

In general, it is typically assumed that   is always well-defined for all   or equivalently, that   does not take on both   and   as values. This article will henceforth assume this; although alternatively, all definitions below could instead be qualified by statements such as "whenever the sum/series is defined". This is sometimes done with subtraction, such as with the following result, which holds whenever   is finitely additive:

Set difference formula:   is defined with   satisfying   and  

Null sets

A set   is called a null set (with respect to  ) or simply null if   Whenever   is not identically equal to either   or   then it is typically also assumed that:

  • null empty set:   if  

Variation and mass

The total variation of a set   is

 
where   denotes the absolute value (or more generally, it denotes the norm or seminorm if   is vector-valued in a (semi)normed space). Assuming that   then   is called the total variation of   and   is called the mass of  

A set function is called finite if for every   the value   is finite (which by definition means that   and  ; an infinite value is one that is equal to   or  ). Every finite set function must have a finite mass.

Common properties of set functions edit

A set function   on   is said to be[1]

  • non-negative if it is valued in  
  • finitely additive if   for all pairwise disjoint finite sequences   such that  
    • If   is closed under binary unions then   is finitely additive if and only if   for all disjoint pairs  
    • If   is finitely additive and if   then taking   shows that   which is only possible if   or   where in the latter case,   for every   (so only the case   is useful).
  • countably additive or σ-additive[2] if in addition to being finitely additive, for all pairwise disjoint sequences   in   such that   all of the following hold:
    1.  
      • The series on the left hand side is defined in the usual way as the limit  
      • As a consequence, if   is any permutation/bijection then   this is because   and applying this condition (a) twice guarantees that both   and   hold. By definition, a convergent series with this property is said to be unconditionally convergent. Stated in plain English, this means that rearranging/relabeling the sets   to the new order   does not affect the sum of their measures. This is desirable since just as the union   does not depend on the order of these sets, the same should be true of the sums   and  
    2. if   is not infinite then this series   must also converge absolutely, which by definition means that   must be finite. This is automatically true if   is non-negative (or even just valued in the extended real numbers).
      • As with any convergent series of real numbers, by the Riemann series theorem, the series   converges absolutely if and only if its sum does not depend on the order of its terms (a property known as unconditional convergence). Since unconditional convergence is guaranteed by (a) above, this condition is automatically true if   is valued in  
    3. if   is infinite then it is also required that the value of at least one of the series   be finite (so that the sum of their values is well-defined). This is automatically true if   is non-negative.
  • a pre-measure if it is non-negative, countably additive (including finitely additive), and has a null empty set.
  • a measure if it is a pre-measure whose domain is a σ-algebra. That is to say, a measure is a non-negative countably additive set function on a σ-algebra that has a null empty set.
  • a probability measure if it is a measure that has a mass of  
  • an outer measure if it is non-negative, countably subadditive, has a null empty set, and has the power set   as its domain.
  • a signed measure if it is countably additive, has a null empty set, and   does not take on both   and   as values.
  • complete if every subset of every null set is null; explicitly, this means: whenever   and   is any subset of   then   and  
    • Unlike many other properties, completeness places requirements on the set   (and not just on  's values).
  • 𝜎-finite if there exists a sequence   in   such that   is finite for every index   and also  
  • decomposable if there exists a subfamily   of pairwise disjoint sets such that   is finite for every   and also   (where  ).
    • Every 𝜎-finite set function is decomposable although not conversely. For example, the counting measure on   (whose domain is  ) is decomposable but not 𝜎-finite.
  • a vector measure if it is a countably additive set function   valued in a topological vector space   (such as a normed space) whose domain is a σ-algebra.
    • If   is valued in a normed space   then it is countably additive if and only if for any pairwise disjoint sequence   in     If   is finitely additive and valued in a Banach space then it is countably additive if and only if for any pairwise disjoint sequence   in    
  • a complex measure if it is a countably additive complex-valued set function   whose domain is a σ-algebra.
    • By definition, a complex measure never takes   as a value and so has a null empty set.
  • a random measure if it is a measure-valued random element.

Arbitrary sums

As described in this article's section on generalized series, for any family   of real numbers indexed by an arbitrary indexing set   it is possible to define their sum   as the limit of the net of finite partial sums   where the domain   is directed by   Whenever this net converges then its limit is denoted by the symbols   while if this net instead diverges to   then this may be indicated by writing   Any sum over the empty set is defined to be zero; that is, if   then   by definition.

For example, if   for every   then   And it can be shown that   If   then the generalized series   converges in   if and only if   converges unconditionally (or equivalently, converges absolutely) in the usual sense. If a generalized series   converges in   then both   and   also converge to elements of   and the set   is necessarily countable (that is, either finite or countably infinite); this remains true if   is replaced with any normed space.[proof 1] It follows that in order for a generalized series   to converge in   or   it is necessary that all but at most countably many   will be equal to   which means that   is a sum of at most countably many non-zero terms. Said differently, if   is uncountable then the generalized series   does not converge.

In summary, due to the nature of the real numbers and its topology, every generalized series of real numbers (indexed by an arbitrary set) that converges can be reduced to an ordinary absolutely convergent series of countably many real numbers. So in the context of measure theory, there is little benefit gained by considering uncountably many sets and generalized series. In particular, this is why the definition of "countably additive" is rarely extended from countably many sets   in   (and the usual countable series  ) to arbitrarily many sets   (and the generalized series  ).

Inner measures, outer measures, and other properties edit

A set function   is said to be/satisfies[1]

  • monotone if   whenever   satisfy  
  • modular if it satisfies the following condition, known as modularity:   for all   such that  
  • submodular if   for all   such that  
  • finitely subadditive if   for all finite sequences   that satisfy  
  • countably subadditive or σ-subadditive if   for all sequences   in   that satisfy  
    • If   is closed under finite unions then this condition holds if and only if   for all   If   is non-negative then the absolute values may be removed.
    • If   is a measure then this condition holds if and only if   for all   in  [3] If   is a probability measure then this inequality is Boole's inequality.
    • If   is countably subadditive and   with   then   is finitely subadditive.
  • superadditive if   whenever   are disjoint with  
  • continuous from above if   for all non-increasing sequences of sets   in   such that   with   and all   finite.
    • Lebesgue measure   is continuous from above but it would not be if the assumption that all   are eventually finite was omitted from the definition, as this example shows: For every integer   let   be the open interval   so that   where  
  • continuous from below if   for all non-decreasing sequences of sets   in   such that  
  • infinity is approached from below if whenever   satisfies   then for every real   there exists some   such that   and  
  • an outer measure if   is non-negative, countably subadditive, has a null empty set, and has the power set   as its domain.
  • an inner measure if   is non-negative, superadditive, continuous from above, has a null empty set, has the power set   as its domain, and   is approached from below.
  • atomic if every measurable set of positive measure contains an atom.

If a binary operation   is defined, then a set function   is said to be

  • translation invariant if   for all   and   such that  

Topology related definitions edit

If   is a topology on   then a set function   is said to be:

  • a Borel measure if it is a measure defined on the σ-algebra of all Borel sets, which is the smallest σ-algebra containing all open subsets (that is, containing  ).
  • a Baire measure if it is a measure defined on the σ-algebra of all Baire sets.
  • locally finite if for every point   there exists some neighborhood   of this point such that   is finite.
    • If   is a finitely additive, monotone, and locally finite then   is necessarily finite for every compact measurable subset  
  •  -additive if   whenever   is directed with respect to   and satisfies  
    •   is directed with respect to   if and only if it is not empty and for all   there exists some   such that   and  
  • inner regular or tight if for every    
  • outer regular if for every    
  • regular if it is both inner regular and outer regular.
  • a Borel regular measure if it is a Borel measure that is also regular.
  • a Radon measure if it is a regular and locally finite measure.
  • strictly positive if every non-empty open subset has (strictly) positive measure.
  • a valuation if it is non-negative, monotone, modular, has a null empty set, and has domain  

Relationships between set functions edit

If   and   are two set functions over   then:

  •   is said to be absolutely continuous with respect to   or dominated by  , written   if for every set   that belongs to the domain of both   and   if   then  
  •   and   are singular, written   if there exist disjoint sets   and   in the domains of   and   such that     for all   in the domain of   and   for all   in the domain of  

Examples edit

Examples of set functions include:

  • The function
     
    assigning densities to sufficiently well-behaved subsets   is a set function.
  • A probability measure assigns a probability to each set in a σ-algebra. Specifically, the probability of the empty set is zero and the probability of the sample space is   with other sets given probabilities between   and  
  • A possibility measure assigns a number between zero and one to each set in the powerset of some given set. See possibility theory.
  • A random set is a set-valued random variable. See the article random compact set.

The Jordan measure on   is a set function defined on the set of all Jordan measurable subsets of   it sends a Jordan measurable set to its Jordan measure.

Lebesgue measure edit

The Lebesgue measure on   is a set function that assigns a non-negative real number to every set of real numbers that belongs to the Lebesgue  -algebra.[5]

Its definition begins with the set   of all intervals of real numbers, which is a semialgebra on   The function that assigns to every interval   its   is a finitely additive set function (explicitly, if   has endpoints   then  ). This set function can be extended to the Lebesgue outer measure on   which is the translation-invariant set function   that sends a subset   to the infimum

 
Lebesgue outer measure is not countably additive (and so is not a measure) although its restriction to the 𝜎-algebra of all subsets   that satisfy the Carathéodory criterion:
 
is a measure that called Lebesgue measure. Vitali sets are examples of non-measurable sets of real numbers.

Infinite-dimensional space edit

As detailed in the article on infinite-dimensional Lebesgue measure, the only locally finite and translation-invariant Borel measure on an infinite-dimensional separable normed space is the trivial measure. However, it is possible to define Gaussian measures on infinite-dimensional topological vector spaces. The structure theorem for Gaussian measures shows that the abstract Wiener space construction is essentially the only way to obtain a strictly positive Gaussian measure on a separable Banach space.

Finitely additive translation-invariant set functions edit

The only translation-invariant measure on   with domain   that is finite on every compact subset of   is the trivial set function   that is identically equal to   (that is, it sends every   to  )[6] However, if countable additivity is weakened to finite additivity then a non-trivial set function with these properties does exist and moreover, some are even valued in   In fact, such non-trivial set functions will exist even if   is replaced by any other abelian group  [7]

Theorem[8] — If   is any abelian group then there exists a finitely additive and translation-invariant[note 1] set function   of mass  

Extending set functions edit

Extending from semialgebras to algebras edit

Suppose that   is a set function on a semialgebra   over   and let

 
which is the algebra on   generated by   The archetypal example of a semialgebra that is not also an algebra is the family
 
on   where   for all  [9] Importantly, the two non-strict inequalities   in   cannot be replaced with strict inequalities   since semialgebras must contain the whole underlying set   that is,   is a requirement of semialgebras (as is  ).

If   is finitely additive then it has a unique extension to a set function   on   defined by sending   (where   indicates that these   are pairwise disjoint) to:[9]

 
This extension   will also be finitely additive: for any pairwise disjoint   [9]
 

If in addition   is extended real-valued and monotone (which, in particular, will be the case if   is non-negative) then   will be monotone and finitely subadditive: for any   such that  [9]

 

Extending from rings to σ-algebras edit

If   is a pre-measure on a ring of sets (such as an algebra of sets)   over   then   has an extension to a measure   on the σ-algebra   generated by   If   is σ-finite then this extension is unique.

To define this extension, first extend   to an outer measure   on   by

 
and then restrict it to the set   of  -measurable sets (that is, Carathéodory-measurable sets), which is the set of all   such that
 
It is a  -algebra and   is sigma-additive on it, by Caratheodory lemma.

Restricting outer measures edit

If   is an outer measure on a set   where (by definition) the domain is necessarily the power set   of   then a subset   is called  –measurable or Carathéodory-measurable if it satisfies the following Carathéodory's criterion:

 
where   is the complement of  

The family of all  –measurable subsets is a σ-algebra and the restriction of the outer measure   to this family is a measure.

See also edit

Notes edit

  1. ^ a b Durrett 2019, pp. 1–37, 455–470.
  2. ^ Durrett 2019, pp. 466–470.
  3. ^ Royden & Fitzpatrick 2010, p. 30.
  4. ^ Kallenberg, Olav (2017). Random Measures, Theory and Applications. Switzerland: Springer. p. 21. doi:10.1007/978-3-319-41598-7. ISBN 978-3-319-41596-3.
  5. ^ Kolmogorov and Fomin 1975
  6. ^ Rudin 1991, p. 139.
  7. ^ Rudin 1991, pp. 139–140.
  8. ^ Rudin 1991, pp. 141–142.
  9. ^ a b c d Durrett 2019, pp. 1–9.
  1. ^ The function   being translation-invariant means that   for every   and every subset  

Proofs

  1. ^ Suppose the net   converges to some point in a metrizable topological vector space   (such as     or a normed space), where recall that this net's domain is the directed set   Like every convergent net, this convergent net of partial sums   is a Cauchy net, which for this particular net means (by definition) that for every neighborhood   of the origin in   there exists a finite subset   of   such that   for all finite supersets   this implies that   for every   (by taking   and  ). Since   is metrizable, it has a countable neighborhood basis   at the origin, whose intersection is necessarily   (since   is a Hausdorff TVS). For every positive integer   pick a finite subset   such that   for every   If   belongs to   then   belongs to   Thus   for every index   that does not belong to the countable set    

References edit

Further reading edit