Monotone convergence theorem: Difference between revisions

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imported>Arthur MILCHIOR
Proof: See https://en.wikipedia.org/wiki/Talk:Monotone_convergence_theorem#c-Arthur_MILCHIOR-20251026111000-Error_in_the_proof_of_lower_bound_of_the_levi_theorem to explain the change. The statement \uparrow A_k=X is false when `s=f`
 
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{{short description|Theorems on the convergence of bounded monotonic sequences}}
{{short description|Theorems on the convergence of bounded monotonic sequences}}
{{cleanup|reason=The organization of this article needs to be reconsidered. Theorems and their proofs are placed into different sections and for some proofs it is not clear which result they are associated with.|date=September 2024}}
In the mathematical field of [[real analysis]], the '''monotone convergence theorem''' is any of a number of related theorems proving the good [[convergence (mathematics)|convergence]] behaviour of [[monotonic sequence]]s, i.e. sequences that are non-[[increasing]], or non-[[decreasing]]. In its simplest form, it says that a non-decreasing  [[Bounded function|bounded]]-above  sequence of real numbers <math>a_1 \le a_2 \le a_3 \le ...\le K</math>  converges to its smallest upper bound, its [[supremum]]. Likewise, a non-increasing bounded-below sequence converges to its largest lower bound, its [[infimum]]. In particular, infinite sums of non-negative numbers converge to the supremum of the partial sums if and only if the partial sums are bounded.
In the mathematical field of [[real analysis]], the '''monotone convergence theorem''' is any of a number of related theorems proving the good [[convergence (mathematics)|convergence]] behaviour of [[monotonic sequence]]s, i.e. sequences that are non-[[increasing]], or non-[[decreasing]]. In its simplest form, it says that a non-decreasing  [[Bounded function|bounded]]-above  sequence of real numbers <math>a_1 \le a_2 \le a_3 \le ...\le K</math>  converges to its smallest upper bound, its [[supremum]]. Likewise, a non-increasing bounded-below sequence converges to its largest lower bound, its [[infimum]]. In particular, infinite sums of non-negative numbers converge to the supremum of the partial sums if and only if the partial sums are bounded.


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==Convergence of a monotone sequence of real numbers==
==Convergence of a monotone sequence of real numbers==


Every bounded-above monotonically nondecreasing sequence of real numbers is convergent in the real numbers because the supremum exists and is a real number. The proposition does not apply to rational numbers because the supremum of a sequence of rational numbers may be irrational.
'''Theorem:''' Let <math>(a_n)_{n\in\mathbb{N}}</math> be a monotone sequence of real numbers (either <math>a_n\le a_{n+1}</math> for all <math>n</math> or <math>a_n\ge a_{n+1}</math> for all <math>n</math>). Then the following are equivalent:
# <math>(a_n)</math> has a finite limit in <math>\mathbb{R}</math>.
# <math>(a_n)</math> is bounded.


===Proposition===
Moreover, if <math>(a_n)</math> is nondecreasing, then <math>\lim_{n\to\infty} a_n=\sup_n a_n</math>; if <math>(a_n)</math> is nonincreasing, then <math>\lim_{n\to\infty} a_n=\inf_n a_n</math>.<ref>A generalisation of this theorem was given by {{cite journal |first=John |last=Bibby |year=1974 |title=Axiomatisations of the average and a further generalisation of monotonic sequences |journal=[[Glasgow Mathematical Journal]] |volume=15 |issue=1 |pages=63–65 |doi=10.1017/S0017089500002135 |doi-access=free }}</ref>
(A) For a non-decreasing and bounded-above sequence of real numbers
:<math>a_1 \le a_2 \le a_3 \le...\le K < \infty,</math>  
the limit <math>\lim_{n \to \infty} a_n</math> exists and equals its [[supremum]]:
:<math>\lim_{n \to \infty} a_n = \sup_n a_n \le K.</math>
 
(B) For a non-increasing and bounded-below sequence of real numbers
:<math>a_1 \ge a_2 \ge a_3 \ge \cdots \ge L > -\infty,</math>
the limit <math> \lim_{n \to \infty} a_n</math> exists and equals its [[infimum]]:
:<math>\lim_{n \to \infty} a_n = \inf_n a_n \ge L</math>.


===Proof===
===Proof===
Let <math>\{ a_n \}_{n\in\mathbb{N}}</math> be the set of values of <math> (a_n)_{n\in\mathbb{N}} </math>. By assumption, <math>\{ a_n \}</math> is non-empty and bounded above by <math>K</math>. By the [[least-upper-bound property]] of real numbers, <math display="inline">c = \sup_n \{a_n\}</math> exists and <math> c \le K</math>. Now, for every <math>\varepsilon > 0</math>, there exists <math>N</math> such that <math>c\ge a_N > c - \varepsilon </math>, since otherwise <math>c - \varepsilon </math> is a strictly smaller upper bound of <math>\{ a_n \}</math>, contradicting the definition of the supremum <math>c</math>. Then since <math>(a_n)_{n\in\mathbb{N}}</math> is non decreasing, and <math>c</math> is an upper bound, for every <math>n > N</math>, we have
'''(1 ⇒ 2)''' Suppose <math>(a_n)\to L\in\mathbb{R}</math>. By the <math>\varepsilon</math>-definition of limit, there exists <math>N</math> such that <math>|a_n-L|<1</math> for all <math>n\ge N</math>, hence <math>|a_n|\le |L|+1</math> for <math>n\ge N</math>. Let <math>M=\max\{\,|a_1|,\dots,|a_{N-1}|,\,|L|+1\,\}</math>. Then <math>|a_n|\le M</math> for all <math>n</math>, so <math>(a_n)</math> is bounded.
:<math>|c - a_n| = c -a_n \leq c - a_N = |c -a_N|< \varepsilon. </math>
Hence, by definition <math> \lim_{n \to \infty} a_n = c =\sup_n a_n</math>.


The proof of the (B) part is analogous or follows from (A) by considering <math>\{-a_n\}_{n \in \N}</math>.
'''(2 ⇒ 1)''' Suppose <math>(a_n)</math> is bounded and monotone.
* If <math>(a_n)</math> is nondecreasing and bounded above, set <math>c=\sup_n a_n</math>. For any <math>\varepsilon>0</math>, there exists <math>N</math> with <math>c-\varepsilon<a_N\le c</math>; otherwise <math>c-\varepsilon</math> would be a smaller upper bound than <math>c</math>. For <math>n\ge N</math>, monotonicity gives <math>a_N\le a_n\le c</math>, hence <math>0\le c-a_n\le c-a_N<\varepsilon</math>. Thus <math>a_n\to c=\sup_n a_n</math>.
* If <math>(a_n)</math> is nonincreasing and bounded below, either repeat the argument with <math>c=\inf_n a_n</math>, or apply the previous case to <math>(-a_n)</math> to obtain <math>a_n\to \inf_n a_n</math>.


===Theorem===
This proves the equivalence.
If <math>(a_n)_{n\in\mathbb{N}}</math> is a monotone [[sequence]] of [[real number]]s, i.e., if <math>a_n \le a_{n+1}</math> for every <math>n \ge 1</math> or <math>a_n \ge a_{n+1}</math> for every <math>n \ge 1</math>, then this sequence has a finite limit [[if and only if]] the sequence is [[bounded sequence|bounded]].<ref>A generalisation of this theorem was given by {{cite journal |first=John |last=Bibby |year=1974 |title=Axiomatisations of the average and a further generalisation of monotonic sequences |journal=[[Glasgow Mathematical Journal]] |volume=15 |issue=1 |pages=63–65 |doi=10.1017/S0017089500002135 |doi-access=free }}</ref>


===Proof===
===Remark===
* "If"-direction: The proof follows directly from the proposition.
The implication "bounded and monotone ⇒ convergent" may fail over <math>\mathbb{Q}</math> because the supremum/infimum of a rational sequence need not be rational. For example, <math>a_n=\lfloor 10^n\sqrt{2}\rfloor/10^n</math> is nondecreasing and bounded above by <math>\sqrt{2}</math>, but has no limit in <math>\mathbb{Q}</math> (its real limit is <math>\sqrt{2}</math>).
* "Only If"-direction: By [[(ε, δ)-definition of limit]], every sequence <math>(a_n)_{n\in\mathbb{N}}</math> with a finite limit <math>L</math> is necessarily bounded.


==Convergence of a monotone series==
==Convergence of a monotone series==
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\left( 1+ \frac1k\right)^k = \sup_k \sum_{i=0}^\infty a_{i,k} = \sum_{i = 0}^\infty \sup_k  a_{i,k} = \sum_{i = 0}^\infty \frac1{i!} = e</math>.
\left( 1+ \frac1k\right)^k = \sup_k \sum_{i=0}^\infty a_{i,k} = \sum_{i = 0}^\infty \sup_k  a_{i,k} = \sum_{i = 0}^\infty \frac1{i!} = e</math>.


==Beppo Levi's lemma==
==Monotone convergence for non-negative measurable functions (Beppo Levi)==
The following result is a generalisation of the monotone convergence of non negative sums theorem above to the measure theoretic setting. It is a cornerstone of measure and integration theory with many applications and has [[Fatou's lemma]] and the [[dominated convergence theorem]] as direct consequence. It is due to [[Beppo Levi]], who proved a slight generalization in 1906 of an earlier result by [[Henri Lebesgue]].
The following result extends the monotone convergence of non-negative series to the measure-theoretic setting. It is a cornerstone of measure and integration theory; [[Fatou's lemma]] and the [[dominated convergence theorem]] follow as direct consequences. It is due to [[Beppo Levi]], who in 1906 proved a slight generalization of an earlier result by [[Henri Lebesgue]].<ref name="BigRudin">{{cite book  
<ref name="BigRudin">{{cite book  
   |last1=Rudin  
   |last1=Rudin  
   |first1=Walter  
   |first1=Walter  
   |title=Real and Complex Analysis  
   |title=Real and Complex Analysis  
   |date=1974  
   |date=1974  
   |publisher=Mc Craw-Hill
   |publisher=McGraw–Hill
   |page=22  
   |page=22  
   |edition=TMH}}
   |edition=TMH}}</ref><ref>{{Citation
</ref>
<ref>{{Citation
   | last1 = Schappacher
   | last1 = Schappacher
   | first1 = Norbert
   | first1 = Norbert
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   | url = http://irma.math.unistra.fr/~schappa/NSch/Publications_files/1996_RSchNSch.pdf
   | url = http://irma.math.unistra.fr/~schappa/NSch/Publications_files/1996_RSchNSch.pdf
   | page = 60
   | page = 60
| s2cid = 125072148
  | s2cid = 125072148
  }}</ref>
  }}</ref>


Let <math>\operatorname{\mathcal B}_{\bar\R_{\geq 0}}</math> denotes the <math>\sigma</math>-algebra of Borel sets on the upper extended non negative real numbers <math>[0,+\infty]</math>.  By definition, <math>\operatorname{\mathcal B}_{\bar\R_{\geq 0}}</math> contains the set <math>\{+\infty\}</math> and all Borel subsets of <math>\R_{\geq 0}.</math>
Let <math>\operatorname{\mathcal B}_{\bar\R_{\ge 0}}</math> denote the Borel <math>\sigma</math>-algebra on the extended half-line <math>[0,+\infty]</math> (so <math>\{+\infty\}\in \operatorname{\mathcal B}_{\bar\R_{\ge 0}}</math>).
 
===Theorem (monotone convergence theorem for non-negative measurable functions)===
Let <math>(\Omega,\Sigma,\mu)</math> be a [[measure (mathematics)|measure space]], and <math>X\in\Sigma</math> a measurable set. Let <math>\{f_k\}^\infty_{k=1}</math> be a pointwise non-decreasing sequence of <math>(\Sigma,\operatorname{\mathcal B}_{\bar\R_{\geq 0}})</math>-[[Measurable function|measurable]] non-negative functions,  i.e. each function <math>f_k:X\to [0,+\infty]</math> is <math>(\Sigma,\operatorname{\mathcal B}_{\bar\R_{\geq 0}})</math>-measurable and for every <math>{k\geq 1}</math> and every <math>{x\in X}</math>,
 
:<math> 0 \leq \ldots\le f_k(x) \leq f_{k+1}(x)\leq\ldots\leq \infty. </math>
 
Then the pointwise supremum
:<math> \sup_k f_k : x \mapsto \sup_k f_k(x) </math>
is a <math>(\Sigma,\operatorname{\mathcal B}_{\bar\R_{\geq 0}})</math>-measurable function and
 
:<math>\sup_k \int_X f_k \,d\mu = \int_X \sup_k f_k \,d\mu.</math>
 
'''Remark 1.''' The integrals and the suprema may be finite or infinite, but the left-hand side is finite if and only if the right-hand side is.
 
'''Remark 2.''' Under the assumptions of the theorem,
{{ordered list|type=lower-alpha
| <math>\textstyle \lim_{k \to \infty} f_k(x) = \sup_k f_k(x) =  \limsup_{k \to \infty} f_k(x) = \liminf_{k \to \infty} f_k(x) </math>
| <math>\textstyle \lim_{k \to \infty} \int_X f_k \,d\mu = \sup_k \int_X f_k \,d\mu = \liminf_{k \to \infty} \int_X f_k \,d\mu =  \limsup_{k \to \infty} \int_X f_k \,d\mu.  </math>
}}
 
Note that the second chain of equalities follows from monoticity of the integral (lemma 2 below). Thus we can also write the conclusion of the theorem as
 
:<math> \lim_{k \to \infty} \int_X f_k(x) \, d\mu(x) = \int_X \lim_{k\to \infty} f_k(x) \, d\mu(x)
</math>
with the tacit understanding that the limits are allowed to be infinite.
 
'''Remark 3.''' The theorem remains true if its assumptions hold <math>\mu</math>-almost everywhere. In other words, it is enough that there is a [[null set]] <math>N</math> such that the sequence <math>\{f_n(x)\}</math> non-decreases for every <math>{x\in X\setminus N}.</math> To see why this is true, we start with an observation that allowing the sequence <math>\{ f_n \}</math> to pointwise non-decrease almost everywhere causes its pointwise limit <math>f</math> to be undefined on some null set <math>N</math>. On that null set, <math>f</math> may then be defined arbitrarily, e.g. as zero, or in any other way that preserves measurability. To see why this will not affect the outcome of the theorem, note that since <math>{\mu(N)=0},</math> we have, for every <math>k,</math>
 
:<math> \int_X f_k \,d\mu = \int_{X \setminus N} f_k \,d\mu</math> and <math>\int_X f \,d\mu = \int_{X \setminus N} f \,d\mu, </math>
 
provided that <math>f</math> is <math>(\Sigma,\operatorname{\mathcal B}_{\R_{\geq 0}})</math>-measurable.<ref name="SCHECHTER1997">See for instance {{cite book |first=Erik |last=Schechter |title=Handbook of Analysis and Its Foundations |location=San Diego |publisher=Academic Press |year=1997 |isbn=0-12-622760-8 }}</ref>{{rp|at=section 21.38}} (These equalities follow directly from the definition of the Lebesgue integral for a non-negative function).


'''Remark 4.''' The proof below does not use any properties of the Lebesgue integral except those established here. The theorem, thus, can be used to prove other basic properties, such as linearity, pertaining to Lebesgue integration.
===Theorem (Monotone convergence for non-negative measurable functions)===
Let <math>(\Omega,\Sigma,\mu)</math> be a [[measure (mathematics)|measure space]] and <math>X\in\Sigma</math>. If <math>\{f_k\}_{k\ge 1}</math> is a sequence of non-negative <math>(\Sigma,\operatorname{\mathcal B}_{\bar\R_{\ge 0}})</math>-measurable functions on <math>X</math> such that <math>0\le f_1(x)\le f_2(x)\le\cdots \quad \text{for all }x\in X,</math>
then the pointwise supremum <math>f:=\sup_k f_k</math> is measurable and <math>\int_X f\,d\mu \;=\; \lim_{k\to\infty}\int_X f_k\,d\mu \;=\; \sup_{k}\int_X f_k\,d\mu.</math>


===Proof===
===Proof===
Let <math>f=\sup_k f_k</math>. Measurability of <math>f</math> follows since pointwise limits/suprema of measurable functions are measurable.


This proof does ''not'' rely on [[Fatou's lemma]]; however, we do explain how that lemma might be used. Those not interested in this independency of the proof may skip the intermediate results below.
'''Upper bound.''' By monotonicity of the integral, <math>f_k\le f</math> implies <math>\limsup_{k}\int_X f_k\,d\mu \;\le\; \int_X f\,d\mu.</math>
 
====Intermediate results====
 
We need three basic lemmas. In the proof below, we apply the monotonic property of the Lebesgue integral to non-negative functions only. Specifically (see Remark 4),
 
====Monotonicity of the Lebesgue integral====
'''lemma 1.'''  let the functions <math>f,g : X \to [0,+\infty]</math> be <math>(\Sigma,\operatorname{\mathcal B}_{\bar\R_{\geq 0}})</math>-measurable.
 
*If <math>f \leq g</math> everywhere on <math>X,</math> then
 
:<math>\int_X f\,d\mu \leq \int_X g\,d\mu.</math>
 
*If <math> X_1,X_2 \in \Sigma </math> and <math>X_1 \subseteq X_2, </math> then
 
:<math>\int_{X_1} f\,d\mu \leq \int_{X_2} f\,d\mu.</math>
 
'''Proof.''' Denote by <math>\operatorname{SF}(h)</math> the set of [[simple function|simple]] <math>(\Sigma, \operatorname{\mathcal B}_{\R_{\geq 0}})</math>-measurable functions <math>s:X\to [0,\infty)</math> such that
<math>0\leq s\leq h</math> everywhere on <math>X.</math>
 
'''1.''' Since <math>f \leq g,</math> we have
<math> \operatorname{SF}(f) \subseteq \operatorname{SF}(g), </math> hence
:<math>\int_X f\,d\mu = \sup_{s\in {\rm SF}(f)}\int_X s\,d\mu \leq \sup_{s\in {\rm SF}(g)}\int_X s\,d\mu = \int_X g\,d\mu.</math>
 
'''2.''' The functions <math>f\cdot {\mathbf 1}_{X_1}, f\cdot {\mathbf 1}_{X_2},</math> where <math>{\mathbf 1}_{X_i}</math> is the indicator function of <math>X_i</math>, are easily seen to be measurable and <math>f\cdot{\mathbf 1}_{X_1}\le f\cdot{\mathbf 1}_{X_2}</math>. Now apply '''1'''.
 
=====Lebesgue integral as measure=====
'''Lemma 2.''' Let <math>(\Omega,\Sigma,\mu)</math> be a measurable space, and let  <math>s:\Omega\to{\mathbb R_{\geq 0}}</math> . be a simple <math>(\Sigma,\operatorname{\mathcal B}_{\R_{\geq 0}})</math>-measurable non-negative function. For a measurable subset <math>A \in \Sigma</math>, define
:<math>\nu_s(A)=\int_A s(x)\,d\mu.</math>
Then <math>\nu_s</math> is a measure on <math>(\Omega, \Sigma)</math>.
 
====Proof (lemma 2)====
Write
<math>s=\sum^n_{k=1}c_k\cdot {\mathbf 1}_{A_k},</math>
with <math>c_k\in{\mathbb R}_{\geq 0}</math> and measurable sets <math>A_k\in\Sigma</math>.  Then
:<math>\nu_s(A)=\sum_{k =1}^n c_k \mu(A\cap A_k).</math>
Since finite positive linear combinations of countably additive set functions are countably additive, to prove countable additivity of <math>\nu_s</math>  it suffices to prove that, the set function defined by <math>\nu_B(A) = \mu(B \cap A)</math> is countably additive for all <math>A \in \Sigma</math>. But this follows directly from the countable additivity of <math>\mu</math>.
 
=====Continuity from below=====
 
'''Lemma 3.''' Let <math>\mu</math> be a measure, and <math>A = \bigcup^\infty_{i=1}A_i</math>, where
:<math>
A_1\subseteq\cdots\subseteq A_i\subseteq A_{i+1}\subseteq\cdots\subseteq A
</math>
is a non-decreasing chain with all its sets <math>\mu</math>-measurable. Then
:<math>\mu(A)=\sup_i\mu(A_i).</math>
 
====proof (lemma 3)====
Set <math>A_0 = \emptyset</math>, then
we decompose <math> A = \coprod_{1 \le i }
A_i \setminus A_{i -1} </math>  as a countable disjoint union of measurable sets and likewise <math>A_k = \coprod_{1\le i \le k } A_i \setminus A_{i -1} </math> as a finite disjoint union. Therefore
<math>\mu(A_k) = \sum_{i=1}^k \mu (A_i \setminus A_{i -1})</math>, and <math>\mu(A) = \sum_{i = 1}^\infty \mu(A_i \setminus A_{i-1})</math> so <math>\mu(A) = \sup_k \mu(A_k)</math>.
 
==Proof of theorem==
Set <math> f(x) = \sup_k f_k(x)</math> for the pointwise supremum at <math>x \in X</math>.
 
'''Step 1.''' The function <math>f</math> is <math> (\Sigma, \operatorname{\mathcal B}_{\bar\R_{\geq 0}}) </math>–measurable, and the integral <math>\textstyle \int_X f \,d\mu </math> is well-defined (albeit possibly infinite)<ref name="SCHECHTER1997"/>{{rp|at=section 21.3}}
 
''proof:'' From <math>0 \le f_k(x) \le \infty</math> we get <math>0 \le f(x) \le \infty</math>. Hence we have to show that <math>f</math> is <math>(\Sigma,\operatorname{\mathcal B}_{\bar\R_{\geq 0}})</math>-measurable. For this, it suffices to prove that <math>f^{-1}([0,t])</math> is <math>\Sigma </math>-measurable for all <math>0 \le t \le \infty</math>, because the intervals <math>[0,t]</math> generate the [[Borel sigma algebra]] on <math>[0,\infty]</math> by taking countable unions, complements and countable intersections.
 
Now since the <math>f_k(x)</math> is a non decreasing sequence,
<math> f(x) = \sup_k f_k(x) \leq t</math> if and only if <math>f_k(x)\leq t</math> for all <math>k</math>. Hence
:<math>f^{-1}([0, t]) = \bigcap_{k =1}^\infty f_k^{-1}([0,t]).</math>
is a measurable set, being the countable intersection of the measurable sets <math>f_k^{-1}([0,t])</math>.
 
Since <math>f \ge 0</math> the integral is well defined (but possibly infinite) as
:<math> \int_X f \,d\mu = \sup_{s \in SF(f)}\int_X s \, d\mu</math>.
 
'''Step 2.''' We have the inequality
 
:<math>\sup_k \int_X f_k \,d\mu \le \int_X f \,d\mu </math>
 
''proof:'' We have <math>f_k(x) \le f(x)</math> for all <math>x \in X</math>, so <math>\int_X f_k(x) \, d\mu \le \int_X f(x)\, d\mu</math>  by "monotonicity of the integral" (lemma 1). Then step 2 follows by the definition of supremum.
 
'''step 3''' We have the reverse inequality
 
:<math> \int_X f \,d\mu  \le \sup_k \int_X f_k \,d\mu </math>.
 
''proof:''
Denote by <math>\operatorname{SF}(f)</math> the set of simple <math>(\Sigma,\operatorname{\mathcal B}_{\R_{\geq 0}})</math>-measurable functions <math>s:X\to [0,\infty)</math> such that <math>0\leq s\leq f</math> on <math>X</math>.
We need an "epsilon of room" to manoeuvre.
For <math>s\in\operatorname{SF}(f)</math> and <math>0 <\varepsilon < 1</math>, define
:<math>B^{s,\varepsilon}_k=\{x\in X\mid (1 - \varepsilon) s(x)\leq f_k(x)\}\subseteq X.</math>
 
We '''claim''' the sets <math>B^{s,\varepsilon}_k</math> have the following properties:
#<math>B^{s,\varepsilon}_k</math> is <math>\Sigma</math>-measurable.
# <math>B^{s,\varepsilon}_k\subseteq B^{s,\varepsilon}_{k+1}</math>
#<math> X=\bigcup_{k = 1}^\infty B^{s,\varepsilon}_k</math>
 
Assuming the claim, by the definition of <math>B^{s,\varepsilon}_k</math> and "monotonicity of the Lebesgue integral" (lemma 1) we have
:<math>\int_{B^{s,\varepsilon}_k}(1-\varepsilon) s\,d\mu\leq\int_{B^{s,\varepsilon}_k} f_k\,d\mu \leq\int_X f_k\,d\mu \le \sup_k \int_X f_k \, d\mu
</math>
Hence by "Lebesgue integral of a simple function as measure" (lemma 2), and "continuity from below" (lemma 3) we get:
:<math> (1- \varepsilon)\int_X s \, d\mu =
\int_X (1- \varepsilon)s \, d\mu  = \sup_k
\int_{B^{s,\varepsilon}_k} (1-\varepsilon)s\,d\mu 
\le \sup_k \int_X f_k \, d\mu. </math>
so
:<math>(1-\varepsilon)\int_X f d\mu \le \sup_k\int_X f_k d\mu</math>
which since <math>\varepsilon</math> is arbitrary, proves step 3. 
Ad 1: Write  <math>s=\sum_{1 \le i \le m}c_i\cdot{\mathbf 1}_{A_i}</math>, for  non-negative constants <math>c_i \in \R_{\geq 0}</math>, and measurable sets <math>A_i\in\Sigma</math>, which we may assume are pairwise disjoint and with union <math>\textstyle X=\coprod^m_{i=1}A_i</math>.  Then for <math> x\in A_i</math> we have <math>(1-\varepsilon)s(x)\leq f_k(x)</math> if and only if <math> f_k(x) \in [( 1- \varepsilon)c_i, \,\infty],</math> so
:<math>B^{s,\varepsilon}_k=\coprod^m_{i=1}\Bigl(f^{-1}_k\Bigl([(1-\varepsilon)c_i,\infty]\Bigr)\cap A_i\Bigr)</math>
which is measurable since the <math>f_k</math> are measurable.
 
Ad 2: For <math> x \in B^{s,\varepsilon}_k</math> we have <math>(1 - \varepsilon)s(x) \le f_k(x)\le f_{k+1}(x)</math> so <math>x \in B^{s,\varepsilon}_{k + 1}.</math>


Ad 3: Fix <math>x \in X</math>. If <math>s(x) = 0</math> then <math>(1 - \varepsilon)s(x) = 0 \le f_1(x)</math>, hence <math>x \in B^{s,\varepsilon}_1</math>. Otherwise, <math>s(x) > 0</math> and <math>(1-\varepsilon)s(x) < s(x) \le f(x) = \sup_k f(x)</math> so <math>(1- \varepsilon)s(x) < f_{N_x}(x)</math> for <math>N_x</math>
'''Lower bound.''' Fix a non-negative simple function <math>s<f</math>. Set <math>A_k=\{x\in X:\; s(x)\le f_k(x)\}.</math> Then <math>A_k\uparrow X</math> because <math>f_k\uparrow f\ge s</math>. For the set function <math>\nu_s(A):=\int_A s\,d\mu,</math> we have <math>\nu_s</math> is a measure (write <math>s=\sum_i c_i \mathbf 1_{E_i}</math> and note <math>\nu_s(A)=\sum_i c_i\,\mu(A\cap E_i)</math>), hence by continuity from below, <math>\int_X s\,d\mu \;=\; \lim_{k\to\infty}\int_{A_k} s\,d\mu.</math> On each <math>A_k</math> we have <math>s\le f_k</math>, so <math>\int_{A_k}s\,d\mu \;\le\; \int_X f_k\,d\mu.</math> Taking limits gives <math>\int_X s\,d\mu \le \liminf_k \int_X f_k\,d\mu</math>. Finally, take the supremum over all simple <math>s<f</math> (which equals <math>\int_X f\,d\mu</math> by definition of the Lebesgue integral) to obtain <math>\int_X f\,d\mu \;\le\; \liminf_k \int_X f_k\,d\mu.</math>
sufficiently large, hence <math>x \in B^{s,\varepsilon}_{N_x}</math>.


The proof of the monotone convergence theorem is complete.
Combining the two bounds yields <math>\int_X f\,d\mu \;=\; \lim_{k\to\infty}\int_X f_k\,d\mu \;=\; \sup_k \int_X f_k\,d\mu. \square</math>


===Relaxing the monotonicity assumption===
===Remarks===
Under similar hypotheses to Beppo Levi's theorem, it is possible to relax the hypothesis of monotonicity.<ref>coudy (https://mathoverflow.net/users/6129/coudy), Do you know important theorems that remain unknown?, URL (version: 2018-06-05): https://mathoverflow.net/q/296540</ref> As before, let <math>(\Omega, \Sigma, \mu)</math> be a [[measure (mathematics)|measure space]] and <math>X \in \Sigma</math>.  Again, <math>\{f_k\}_{k=1}^\infty</math> will be a sequence of <math>(\Sigma, \mathcal{B}_{\R_{\geq 0}})</math>-[[Measurable function|measurable]] non-negative functions <math>f_k:X\to [0,+\infty]</math>.  However, we do not assume they are pointwise non-decreasing.  Instead, we assume that <math display="inline">\{f_k(x)\}_{k=1}^\infty</math> converges for almost every <math>x</math>, we define <math>f</math> to be the pointwise limit of <math>\{f_k\}_{k=1}^\infty</math>, and we assume additionally that <math>f_k \le f</math> pointwise almost everywhere for all <math>k</math>. Then <math>f</math> is <math>(\Sigma, \mathcal{B}_{\R_{\geq 0}})</math>-measurable, and <math display="inline">\lim_{k\to\infty} \int_X f_k \,d\mu</math> exists, and <math display="block">\lim_{k\to\infty} \int_X f_k \,d\mu = \int_X f \,d\mu.</math>
# (Finiteness.) The quantities may be finite or infinite; the left-hand side is finite iff the right-hand side is.
# (Pointwise and integral limits.) Under the hypotheses,
#* <math>\displaystyle \lim_{k\to\infty} f_k(x)=\sup_k f_k(x)=\limsup_{k\to\infty} f_k(x)=\liminf_{k\to\infty} f_k(x)</math> for all <math>x</math>;
#* by monotonicity of the integral, <math>\displaystyle \lim_{k\to\infty}\int_X f_k\,d\mu=\sup_k\int_X f_k\,d\mu=\liminf_{k\to\infty}\int_X f_k\,d\mu=\limsup_{k\to\infty}\int_X f_k\,d\mu.</math> Equivalently, <math>\displaystyle \lim_{k\to\infty}\int_X f_k\,d\mu=\int_X \lim_{k\to\infty} f_k\,d\mu,</math> with the understanding that the limits may be <math>+\infty</math>.
# (Almost-everywhere version.) If the monotonicity holds <math>\mu</math>-almost everywhere, then redefining the limit function arbitrarily on a null set preserves measurability and leaves all integrals unchanged. Hence the theorem still holds.
# (Foundational role.) The proof uses only: (i) monotonicity of the integral for non-negative functions; (ii) that <math>A\mapsto\int_A s\,d\mu</math> is a measure for simple <math>s</math>; and (iii) continuity from below of measures. Thus the lemma can be used to derive further basic properties (e.g. linearity) of the Lebesgue integral.
# (Relaxing the monotonicity assumption.) Under similar hypotheses, one can relax monotonicity.<ref>coudy (https://mathoverflow.net/users/6129/coudy), Do you know important theorems that remain unknown?, URL (version: 2018-06-05): https://mathoverflow.net/q/296540</ref> Let <math>(\Omega,\Sigma,\mu)</math> be a measure space, <math>X\in\Sigma</math>, and let <math>\{f_k\}_{k\ge 1}</math> be non-negative measurable functions on <math>X</math> such that <math>f_k(x)\to f(x)</math> for a.e. <math>x</math> and <math>f_k\le f</math> a.e. for all <math>k</math>. Then <math>f</math> is measurable, the limit <math>\displaystyle\lim_{k\to\infty}\int_X f_k\,d\mu</math> exists, and <math>\displaystyle \lim_{k\to\infty}\int_X f_k\,d\mu \;=\; \int_X f\,d\mu.</math>


==Proof based on Fatou's lemma==
===Proof based on Fatou's lemma===
The proof can also be based on Fatou's lemma instead of a direct proof as above, because Fatou's lemma can be proved independent of the monotone convergence theorem.   
The proof can also be based on [[Fatou's lemma]] instead of a direct proof as above, because Fatou's lemma can be proved independent of the monotone convergence theorem.   
However the monotone convergence theorem is in some ways more primitive than Fatou's lemma. It easily follows from the monotone convergence theorem and proof of Fatou's lemma is similar and arguably slightly less natural than the proof above.
However the monotone convergence theorem is in some ways more primitive than Fatou's lemma. It easily follows from the monotone convergence theorem and proof of Fatou's lemma is similar and arguably slightly less natural than the proof above.



Latest revision as of 16:50, 26 October 2025

Template:Short description In the mathematical field of real analysis, the monotone convergence theorem is any of a number of related theorems proving the good convergence behaviour of monotonic sequences, i.e. sequences that are non-increasing, or non-decreasing. In its simplest form, it says that a non-decreasing bounded-above sequence of real numbers a1a2a3...K converges to its smallest upper bound, its supremum. Likewise, a non-increasing bounded-below sequence converges to its largest lower bound, its infimum. In particular, infinite sums of non-negative numbers converge to the supremum of the partial sums if and only if the partial sums are bounded.

For sums of non-negative increasing sequences 0ai,1ai,2, it says that taking the sum and the supremum can be interchanged.

In more advanced mathematics the monotone convergence theorem usually refers to a fundamental result in measure theory due to Lebesgue and Beppo Levi that says that for sequences of non-negative pointwise-increasing measurable functions 0f1(x)f2(x), taking the integral and the supremum can be interchanged with the result being finite if either one is finite.

Convergence of a monotone sequence of real numbers

Theorem: Let (an)n be a monotone sequence of real numbers (either anan+1 for all n or anan+1 for all n). Then the following are equivalent:

  1. (an) has a finite limit in .
  2. (an) is bounded.

Moreover, if (an) is nondecreasing, then limnan=supnan; if (an) is nonincreasing, then limnan=infnan.[1]

Proof

(1 ⇒ 2) Suppose (an)L. By the ε-definition of limit, there exists N such that |anL|<1 for all nN, hence |an||L|+1 for nN. Let M=max{|a1|,,|aN1|,|L|+1}. Then |an|M for all n, so (an) is bounded.

(2 ⇒ 1) Suppose (an) is bounded and monotone.

  • If (an) is nondecreasing and bounded above, set c=supnan. For any ε>0, there exists N with cε<aNc; otherwise cε would be a smaller upper bound than c. For nN, monotonicity gives aNanc, hence 0cancaN<ε. Thus anc=supnan.
  • If (an) is nonincreasing and bounded below, either repeat the argument with c=infnan, or apply the previous case to (an) to obtain aninfnan.

This proves the equivalence.

Remark

The implication "bounded and monotone ⇒ convergent" may fail over because the supremum/infimum of a rational sequence need not be rational. For example, an=10n2/10n is nondecreasing and bounded above by 2, but has no limit in (its real limit is 2).

Convergence of a monotone series

There is a variant of the proposition above where we allow unbounded sequences in the extended real numbers, the real numbers with and added.

¯={,}

In the extended real numbers every set has a supremum (resp. infimum) which of course may be (resp. ) if the set is unbounded. An important use of the extended reals is that any set of non negative numbers ai0,iI has a well defined summation order independent sum

iIai=supJI, |J|<jJaj¯0

where ¯0=[0,]¯ are the upper extended non negative real numbers. For a series of non negative numbers

i=1ai=limki=1kai=supki=1kai=supJ,|J|<jJaj=iai,

so this sum coincides with the sum of a series if both are defined. In particular the sum of a series of non negative numbers does not depend on the order of summation.

Monotone convergence of non negative sums

Let ai,k0 be a sequence of non-negative real numbers indexed by natural numbers i and k. Suppose that ai,kai,k+1 for all i,k. Then[2]Template:Rp

supkiai,k=isupkai,k¯0.

Proof

Since ai,ksupkai,k we have iai,kisupkai,k so supkiai,kisupkai,k.

Conversely, we can interchange sup and sum for finite sums by reverting to the limit definition, so i=1Nsupkai,k=supki=1Nai,ksupki=1ai,k hence i=1supkai,ksupki=1ai,k.

Examples

Matrices

The theorem states that if you have an infinite matrix of non-negative real numbers ai,k0 such that the rows are weakly increasing and each is bounded ai,kKi where the bounds are summable iKi< then, for each column, the non decreasing column sums iai,kKi are bounded hence convergent, and the limit of the column sums is equal to the sum of the "limit column" supkai,k which element wise is the supremum over the row.

e

Consider the expansion

(1+1k)k=i=0k(ki)1ki

Now set

ai,k=(ki)1ki=1i!kkk1kki+1k

for ik and ai,k=0 for i>k, then 0ai,kai,k+1 with supkai,k=1i!< and

(1+1k)k=i=0ai,k.

The right hand side is a non decreasing sequence in k, therefore

limk(1+1k)k=supki=0ai,k=i=0supkai,k=i=01i!=e.

Monotone convergence for non-negative measurable functions (Beppo Levi)

The following result extends the monotone convergence of non-negative series to the measure-theoretic setting. It is a cornerstone of measure and integration theory; Fatou's lemma and the dominated convergence theorem follow as direct consequences. It is due to Beppo Levi, who in 1906 proved a slight generalization of an earlier result by Henri Lebesgue.[3][4]

Let ¯0 denote the Borel σ-algebra on the extended half-line [0,+] (so {+}¯0).

Theorem (Monotone convergence for non-negative measurable functions)

Let (Ω,Σ,μ) be a measure space and XΣ. If {fk}k1 is a sequence of non-negative (Σ,¯0)-measurable functions on X such that 0f1(x)f2(x)for all xX, then the pointwise supremum f:=supkfk is measurable and Xfdμ=limkXfkdμ=supkXfkdμ.

Proof

Let f=supkfk. Measurability of f follows since pointwise limits/suprema of measurable functions are measurable.

Upper bound. By monotonicity of the integral, fkf implies lim supkXfkdμXfdμ.

Lower bound. Fix a non-negative simple function s<f. Set Ak={xX:s(x)fk(x)}. Then AkX because fkfs. For the set function νs(A):=Asdμ, we have νs is a measure (write s=ici𝟏Ei and note νs(A)=iciμ(AEi)), hence by continuity from below, Xsdμ=limkAksdμ. On each Ak we have sfk, so AksdμXfkdμ. Taking limits gives Xsdμlim infkXfkdμ. Finally, take the supremum over all simple s<f (which equals Xfdμ by definition of the Lebesgue integral) to obtain Xfdμlim infkXfkdμ.

Combining the two bounds yields Xfdμ=limkXfkdμ=supkXfkdμ.

Remarks

  1. (Finiteness.) The quantities may be finite or infinite; the left-hand side is finite iff the right-hand side is.
  2. (Pointwise and integral limits.) Under the hypotheses,
    • limkfk(x)=supkfk(x)=lim supkfk(x)=lim infkfk(x) for all x;
    • by monotonicity of the integral, limkXfkdμ=supkXfkdμ=lim infkXfkdμ=lim supkXfkdμ. Equivalently, limkXfkdμ=Xlimkfkdμ, with the understanding that the limits may be +.
  3. (Almost-everywhere version.) If the monotonicity holds μ-almost everywhere, then redefining the limit function arbitrarily on a null set preserves measurability and leaves all integrals unchanged. Hence the theorem still holds.
  4. (Foundational role.) The proof uses only: (i) monotonicity of the integral for non-negative functions; (ii) that AAsdμ is a measure for simple s; and (iii) continuity from below of measures. Thus the lemma can be used to derive further basic properties (e.g. linearity) of the Lebesgue integral.
  5. (Relaxing the monotonicity assumption.) Under similar hypotheses, one can relax monotonicity.[5] Let (Ω,Σ,μ) be a measure space, XΣ, and let {fk}k1 be non-negative measurable functions on X such that fk(x)f(x) for a.e. x and fkf a.e. for all k. Then f is measurable, the limit limkXfkdμ exists, and limkXfkdμ=Xfdμ.

Proof based on Fatou's lemma

The proof can also be based on Fatou's lemma instead of a direct proof as above, because Fatou's lemma can be proved independent of the monotone convergence theorem. However the monotone convergence theorem is in some ways more primitive than Fatou's lemma. It easily follows from the monotone convergence theorem and proof of Fatou's lemma is similar and arguably slightly less natural than the proof above.

As before, measurability follows from the fact that f=supkfk=limkfk=lim infkfk almost everywhere. The interchange of limits and integrals is then an easy consequence of Fatou's lemma. One has Xfdμ=Xlim infkfkdμlim infXfkdμ by Fatou's lemma, and then, since fkdμfk+1dμfdμ (monotonicity), lim infXfkdμlim supkXfkdμ=supkXfkdμXfdμ. Therefore Xfdμ=lim infkXfkdμ=lim supkXfkdμ=limkXfkdμ=supkXfkdμ.

See also

Notes

Template:Reflist

Template:Measure theory

it:Passaggio al limite sotto segno di integrale#Integrale di Lebesgue

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  5. coudy (https://mathoverflow.net/users/6129/coudy), Do you know important theorems that remain unknown?, URL (version: 2018-06-05): https://mathoverflow.net/q/296540