User:TakuyaMurata/Calculus

Module and linear space edit

An additive group   is said to be a module over  , or R-module for short, if the scalars, the members of a ring  , satisfy the following properties: if   and  

  • (i) Both   and   are in  
  • (ii)   (associativity)
  • (iii)   and   (distribution law)
  • (iv)  

By definition, every abelian group itself is a module over  , since   and   is a scalar. Finally, a linear space is a module over a field. Defining the notion of dimension is a bit tricky. However, we can safely say a  -vector space is finite-dimensional if it has a finite basis; that is, we can find linear independent vectors   so that  . Such a basis need not be unique.

3 Theorem Let   be a finite-dimensional  -vector space. Then   has the same dimension as   does; that is, every basis for   has the same cardinality as every basis for   does.

It can be shown that the map   cannot be defined constructively.[1] (TODO: need to detail this matter)

1 Theorem If   is a TVS and every finite subset of   is closed, it then follows that   is a Hausdorff space.
Proof: Let   with   be given. Moreover, let   be the complement of the singleton  , which is open by hypothesis. Since the function   is continuous at   and   is in  , we can find an   open and such that  . Here, we used, and would do so henceforward, the notation   the union of   taken all over   and  . Furthermore, since the function   is continuous and so is its inverse, namely  , we may assume that   by replacing   by the intersection of   and  . By repeating the same construction for each   where  , we find   so that  . It then follows that   and   are disjoint. Indeed, if we write   for some  , then  , a contradiction.  

Normed spaces edit

A vector space is said to be normed if it is a metric space and its metric   has the form:

 

Here, the function  , called a norm, has the property (in addition to that it induces the metric) that   for any scalar  . We note that:

 

and

  for any  .

It may go without saying but a vector space is infinite-dimensional if it is not finite-dimensional.

3 Theorem Let  ,   be normed spaces. If   is an infinite-dimensional and if   is nonzero, there exists a linear operator   that is not continuous.

Baire's theorem edit

A normed space is said to be complete when every Cauchy sequence in it converges in it.

3 Theorem Let   is a subspace of a Banach space   carrying the same norm. Then the following are equivalent:

(a)   is complete.
(b)   is closed in  .
(c)   implies  .

Proof: (i) Show (a)   (b). If   is complete, then every Cauchy sequence in   has the limit in  ; thus,   is closed. Conversely, if   is closed, then every Cauchy sequence converges in   since   is complete. Hence,   is complete. (ii) Show (a)   (c). Let   be a Cauchy sequence. Then

  as  .

Thus,   is Cauchy, and converges in   since the completeness. Conversely, since a Cauchy sequence is convergent, we can find its subsequence   such that  . Then

 .

If the summation condition holds, then it follows that   converges in  . Hence,   converges in   as well.  

3 Corollary   is incomplete but dense in  .
Proof:   is not closed in  . Since   has empty interior,  .  

We say a set has dense complement if its closure has empty interior.

The next is the theorem whose importance is not what it says literally but that of consequences. Though the theorem can be proved more generally for a pseudometric space; e.g., F-space, this classical formulation suffices for the remainder of the book.

3 Theorem A complete normed space   which is nonempty is never the union of a sequence of subsets of   with dense complement.
Proof: Let   be a sequence of subsets of   with dense complement. Since   has empty interior and   has nonempty interior, there exists an nonempty open ball   with the radius  . Since   has empty interior and   has empty interior, again there exists an nonempty open ball   with the radius  . Iterating the construction ad infinitum we get the decreasing sequence  . Now let   be the sequence of the centers of  . Then   is Cauchy since: for some  

  as  .

It then follows   converges in   from the compleness of  .  

3 Corollary (open mapping theorem) If   and   are Banach spaces, then a continuous linear surjection   maps an open set in   to an open set in  .
Proof: Left as an exercise.

The following gives an nice example of the consequences of Baire's theorem.

3 Corollary (Lipschitz continuity) Let   = the set of functions   such that there exists some   such that:

  for all  .

Then (i)   is complete, (ii)   is closed and has dense complement, and (iii) there exists a   that is not in any  ; i.e., one that is differentiable nowhere.
Proof: (i)   is complete; thus,   is a Banach space by some early theorem. (ii) Let   be a sequence, and suppose  . Then we have:

   
  as  

Thus,  ; i.e.,   is closed. Stone-Weierstrass theorem says that every continuous function can be uniformly approximated by some infinitely differentiable function; thus, we find a   such that:

 .

If we let  , then

 

Hence,   has dense complement. Finally, (iii) follows from Baire's theorem since (i) and (ii).  

More concisely, the theorem says that not every continuity is Lipschitz because of Baire's theorem.

3 Lemma In a topological space  , the following are equivalent:

  • (i) Every countable union of closed sets with empty interior has empty interior.
  • (ii) Every countable intersection of open dense sets is dense.

Proof: The lemma holds since an open set is dense if and only if its complement has empty interior.  

When the above equivalent conditions are true, we say   is a Baire space.

3 Theorem If a Banach space   has a Schauder basis, a unique sequence of scalars such that

  as  ,

then   is separable.
Proof:

The validity of the converse had been known as a Basis Problem for long time. It was, however, proven to be false in 19-something by someone.

Duality edit

The kernel of a linear operator  , denoted by  , is the set of all zero divisors for  . A kernel of a linear operator is a linear space since   and   implies  . Moreover, a linear operator has zero kernel if and only it is injective.

3 Theorem Let   be a linear functional. Then   is continuous if and only if   is closed.
Proof: If   is continuous, then   is closed since a finite set is closed. Conversely, suppose   is not continuous. Then there exists a sequence   such that

 

In other words,   is not closed.  

3 Theorem If   is a linear functional on  , then

 

Proof: Let   where   if   else  .  

The dual of a linear space  , denoted by  , is the set of all of linear operators from   to   (i.e., either   or  ). Every dual of a linear space becomes again a linear space over the same field as the original one since the set of linear spaces forms an additive group.

Theorem Let G be a normed linear space. Then

  and  .

The duality between a Banach space and its dual gives rise to.

Example: For   finite, the dual of   is   where  .

3 Theorem (Krein-Milman) The unit ball of the dual of a real normed linear space has an extreme point.
Proof: (TODO: to be written)

The theorem is equivalent to the AC. [2]

The Hahn-Banach theorem edit

3 Theorem (Hahn-Banach) Let   be normed vector spaces over real numbers. Then the following are equivalent.

  • (i) Every collection of mutually intersecting closed balls of   has nonempty intersection. (binary intersection property)
  • (ii) If   is a subspace and   is a continuous linear operator, then   can be extend to a   on   such that  . (dominated version)
  • (iii) If the linear variety   does not meet a non-empty open convex subset   of  , then there exists a closed hyper-plane   containing   that does not meet   either. (geometric form)

3 Corollary If the equivalent conditions hold in the theorem,   is complete.
Proof: Consider the identity map extended to the completion of  .  

3 Corollary Let   be a linear operator from a Banach space   to a Banach space  . If there exists a set   and operators   and   such that   and  , then   can be extended to a Banach space containing   without increase in norm.

Hilbert spaces edit

A linear space   is called a pre-Hilbert space if for each ordered pair of   there is a unique complex number called an inner product of   and   and denoted by   satisfying the following properties:

  • (i)   is a linear operator of   when   is fixed.
  • (ii)   (where the bar means the complex conjugation).
  • (iii)   with equality only when  .

When only one pre-Hilbert space is being considered we usually omit the subscript  .

We define   and indeed this is a norm. Indeed, it is clear that   and (iii) is the reason that   implies that  . Finally, the triangular inequality follows from the next lemma.

3 Lemma (Schwarz's inequality)   where the equality holds if and only if we can write   for some scalar  .

If we assume the lemma, then since   for any complex number   it follows:

   
 
 

Proof of Lemma: The lemma is just a special case of the next theorem:

3 Theorem Let   be a pre-Hilbert and   be an orthonormal set (i.e., for     iff   iff   is nonzero.)

  • (i)   for any  .
  • (ii) The equality holds in (i) if and only if   is maximal in the collection of all orthonormal subsets of   ordered by  .

Proof: (TODO)

3 Theorem Let   be a sequence in a pre-Hilbert space with  . If  , then

  for any sequence   of scalars.

Proof: Let   be a set of all pairs   such that  ,   and  . By Hölder's inequality we get:

 .

Since

 ,

we get the second inequality. Moreover,

 

and this gives the first inequality.  

3 Theorem (Bessel's inequality) Let   be an orthonormal subset of a pre-Hilbert space. Then for each   in the space,

 

where the sum can be obtained over some countable subset of   and the equality holds if and only if   is maximal; i.e.,   is contained in no other orthogonal sets.
Proof: First suppose   is finite; i.e.,  . Let  . Since for each  ,  , by the preceding theorem or by direct computation,

   
 

Now suppose that   is maximal. Let  . Then by the same reasoning above,   is orthogonal to every  . But since the assumed maximality  . Hence,

 . Conversely, suppose that   is not maximal. Then there exists some nonzero   such that   for every  . Thus,
 .

The general case follows from the application of Egorov's theorem.  

3 Corollary In view of Zorn's Lemma, it can be shown that a set satisfying the condition in (ii) exists. (TODO: need elaboration)

3 Lemma The function   is continuous each time   is fixed.
Proof: If  , from Schwarz's inequality it follows:

  as  .  

Given a linear subspace   of  , we define:  . In other words,   is the intersection of the kernels of the continuous functionals  , which are closed; hence,   is closed. (TODO: we can also show that  )

3 Lemma Let   be a linear subspace of a pre-Hilbert space. Then   if and only if  .
Proof: The Schwarz inequality says the inequality

 

is actually equality if and only if   and   are linear dependent.  

3 Theorem (Riesz) Let   be a pre-Hilbert space and   be its subspace. The following are equivalent:

  • (i)   is a complete.
  • (ii)   is dense if and only if  .
  • (iii) Every continuous linear functional on   has the form   where y is uniquely determined by  .

Proof: If   and  , then  . (Note: completeness was not needed.) Conversely, if   is not dense, then it can be shown (TODO: using completeness) that there is   such that

 .

That is,  . In sum, (i) implies (ii). To show (iii), we may suppose that   is not identically zero, and in view of (ii), there exists a   with  . Since  ,

 .

The uniqueness holds since   for all   implies that  . Finally, (iii) implies reflexivility which implies (i).  

A complete pre-Hilbert space is called a Hilbert space.

3 Corollary Let   be a a closed linear subspace of a Hilbert space</math>

  • (i) For any   we can write   where   and   and   are uniquely determined by  .
  • (ii) then  .

Proof: (i) Let   be given. Define   for each  . Since   is continuous and linear on  , which is a Hilbert space, there is   such that  . It follows that   for any  ; that is,  . The uniqueness holds since if   and  , then   and the representation is unique. (ii) If  , then since   is orthogonal to  . Thus,   and taking closure on both sides we get:  . Also, if  , then we write:   where   and   and  . Thus,  . Since   implies that   and  , the corollary follows.  

Integration edit

3 Theorem (Fundamental Theorem of Calculus) The following are equivalent.

  • (i) The derivative of   at   is  .
  • (ii)   is absolutely continuous.

Proof: Suppose (ii). Since we have:

 ,

for any  ,

 .  

Differentiation edit

Differentiation of   at   is to take the limit of the quotient by letting  :

 .

When the limit of the quotient indeed exists, we say   is differentiable at  . The derivative of  , denoted by  , is defined by   = the limit of the quotient at  .

3.8. Theorem The power series:

 

is analytic inside the radius of convergence.
Proof: The normal convergence of   implies the theorem.

To show that every analytic function can be represented by a power series, we will, though not necessarily, wait for Cauchy's integral formula.

We define the norm in  , thereby inducing topology;

 .

The topology in this way is often called a natural topology of  , since so to speak we don't artificially induce a topology by defining  .

3. Theorem (Euler's formula)

  If  .

Proof:

3. Theorem (Cauchy-Riemann equations) Suppose  . We have:

  on   if and only if   on  .

Proof:

3. Corollary Let   are non-constant and analytic in  . If  , then  .
Proof: Let  . Then  . Thus,  , and hence g = 0</math>.  

This furnishes examples of functions that are not analytic. For example,   is analytic everywhere and that means   cannot be analytic unless  .

A operator   is bounded if there exists a constant   such that for every  :

 .

3.1 Theorem Given a bounded operator  , if

 ,   and  ,

then  .
Proof: Since   can be verified (FIXME) and   is inf,

 .

Thus,

 .

But if   in the above, then this is absurd since   is sup; hence the theorem is proven.

We denote by   either of the above values, and call it the norm of  

3.2 Corollary A operator   is bounded if and only if is continuous.
Proof: If   is bounded, then we find   and since the identity: for every   and  

 ,

  is continuous everywhere. Conversely, every continuous operator maps a open ball centered at 0 of radius 1 to some bounded set; thus, we find the norm of  ,  , and the theorem follows after the preceding theorem.  

3. Theorem If F is a linear space of dimension  , then it has exactly   subspaces including F and excluding {0}.
Proof: F has a basis of n elements.

Theorem If H is complete, then   (i.e., a cartesian space of E) is complete
Proof: Let   be a Cauchy sequence. Then we have:

  as  .

Since orthogonality, we have:

 ,

and both   and   are also Cauchy sequences. Since completeness, the respective limits   and   are in  ; thus, the limit   is in E_2.  

The theorem shows in particular that   are complete.

3. Theorem (Hamel basis) The Axiom of Choice implies that every linear space has a basis
Proof: We may suppose the space is infinite-dimensional, otherwise the theorem holds trivially.

FIXEME: Adopt [3]. 3. Theorem (Fixed Point Theorem) Suppose a function f maps a closed subset   of a Banach space to itself, and further suppose that there exists some   such that   for any   and  . Then   has a unique fixed point.
Proof: Let   be a sequence:  . For any   for some  . Then we have:

 .

By induction it follows:

 .

Thus,   is a Cauchy sequence since:

 
 .

That   is closed puts the limit of   in  . Finally, the uniqueness follows since if   and  , then

  or  unless  .  

3. Corollary (mean value inequality) Let   be differentiable. Then there exists some   for some   such that

 

where the equality holds if   (mean value theorem).
Proof:

Theorem Let   where   and is open. If   are bounded in  , then   is continuous.
Proof: Let   and   be given. Using the assumption, we find a constant   so that:

  for  .

Let  . Suppose   and  . Let

 .

Then by the mean value theorem, we have: for some  ,

   
 .

It thus follows: since  ,

   
   

Theorem (differentiation rules)' Given   differentiable,

  • (a) (Chain Rule)  .
  • (b) (Product Rule)  .
  • (b) (Quotient Rule)  .

Proof: (b) and (c) follows after we apply (a) to them with  ,   and the implicit function theorem.  .

Theorem (Cauchy-Riemann equations) Let   and  . Then   is differentiable if and only if   and   are continuous on   and   on  .
Proof: Suppose   is differentiable. Let   and   and  .

   
 

Since   and  , the Chain Rule gives:

   
 
 .

Conversely, let  . It suffices to show that  . Let   be given and   and  . Since the continuity of the partial derivatives and that   is open, we can find a   so that:   and for   it holds:

  and  .

Let   be given and   and  . Using the mean value theorem we have: for some  ,

   
 

where   by assumption. Finally it now follows:

   
   

3 Corollary Let   and suppose   is connected. Then the following are equivalent:

  • (a)   is constant.
  • (b)   is constant.
  • (c)   is constant.

Proof: That (a)   (b) is obvious. Suppose (b). Since we have some constant   so that for all  ,

 ,

clearly it holds that  . Thus, (b)   (c). Suppose (c). Then  . Differentiating both sides we get:

 .

Since  , it follows that   and  . If  , then  . If  , then   is constant since   is connected. Thus, (c)   (a).  

We say a function has the open mapping property if it maps open sets to open sets. The maximum principle states that equivalently

  • if a function has a local maximum, then the function is constant.

3 Theorem Let  . The following are equivalent:

  • (a)   is harmonic.
  • (b)   has the mean value property.

3 Theorem Let  . If   has the open mapping property, then the maximum principle holds.
Proof: Suppose   and   is open and connected. Let  . If   has a local maximum, then   is nonempty. Also,   is closed in   since  . Let  . Since   is open, we can find a   so that:  . Since   is open by the open mapping property, we can find a   so that  . This is to say that   for some  . This is absurd since   and   for all  . Thus,   identically on   and it thus holds that   and   is open in  . Since   is connected,  . Therefore,   on  .  


Addendum edit

Exercise Let  . Then   is a polynomial of degree   if and only if there are constants   and   such that   for all  .

Exercise 2 Let   be linear. Further suppose   has dimension  . Then the following are equivalent:

  1.   exists
  2.   where  
  3. The set
      has dimension  .