Lecture from: 27.03.2024 | Video: Video ETHZ
Review: Theorem on Inverse Mappings
If is an interval and is continuous and strictly monotonic, then its inverse function is also continuous and strictly monotonic.
Imagine two number lines, one representing the interval and the other representing the image of under , which is . We have points on the interval . The function maps these points to on , such that . The inverse function goes in the opposite direction, from back to .
The key idea is that: converges to if and only if converges to .
Example
Let (positive integers). Consider the function:
This function is continuous, strictly monotonically increasing, and surjective on .
According to the theorem on inverse mappings, the inverse function also exists and is continuous, strictly monotonically increasing, and surjective. This inverse function is:
which is the -th root function.
The Real Exponential Function
Recall: Definition and Properties of Exponential Function
- Definition: The exponential function is defined by the power series:
- Addition Theorem: For all :
- Alternative Representation:
Theorem: Properties of Real Exponential Function
The exponential function is continuous, strictly monotonically increasing, and surjective.
Proof
For , we have:
Image of
Since , all terms in the series are non-negative, and the first two terms are . Thus, for , . In particular for and .
Furthermore, . This implies . Since for , we have for .
Therefore, for all . Hence, the image of is contained in , i.e., .
Strictly Monotonically Increasing
For , consider . Since , we know . Also, since , we have:
If , then , so , and therefore . This shows that is strictly monotonically increasing.
Fact: for all
For and , we have the Bernoulli inequality: . Thus, for , we have .
Taking the limit as :
Continuity at 0
Consider . From the fact, we have and .
Since , we have , which implies (since for ).
Thus, for :
Consider the limits as :
Since and are continuous at , by the Sandwich Lemma (Squeeze Theorem) for sequential continuity, is continuous at . (Compare with the solution to the clicker question from last time).
Continuity at
For all , we use the addition theorem:
Let . Due to the continuity of at , there exists such that for all , we have .
From , for all with , let , so . Then:
Using the inequality :
Thus, for , we have . This shows that is continuous at .
Surjectivity
For , since . So .
Also, .
By the Intermediate Value Theorem, for any interval , since is continuous, the image of the interval under must contain . That is, .
Since this holds for all , we have:
But, .
Therefore, . We already knew . Combining both, we get . Thus, is surjective.
Natural Logarithm: Inverse of Exponential Function
The inverse mapping of is called the natural logarithm, denoted as .
(also sometimes denoted as ).
Corollary: Properties of the Natural Logarithm
The natural logarithm is strictly monotonically increasing, continuous, and bijective.y
For all , the following functional equation holds:
Proof
The theorem about inverse mappings gives us all properties except for the functional equation.
For :
Apply to both sides of the equation:
Since is the inverse of , we have:
General Powers
For and , we define the general power:
Alternatively, we can write .
In particular, for :
Corollary: Properties of General Powers
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For , the function:
is continuous, strictly monotonically increasing, and bijective.
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For , the function:
is continuous, strictly monotonically decreasing, and bijective.
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For :
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For :
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For :
Proof
Consider the composition of functions for :
Since , multiplication by , and are continuous functions, their composition is also continuous on .
For , all arrows in the diagram represent bijective mappings. Therefore, the composition is also bijective for .
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For : all arrows represent strictly monotonically increasing functions. The composition of strictly monotonically increasing functions is strictly monotonically increasing. Thus, is strictly monotonically increasing for .
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For : and are strictly monotonically increasing, but multiplication by is strictly monotonically decreasing. So we have: (strictly increasing) (strictly decreasing) (strictly increasing) = strictly monotonically decreasing. Thus, is strictly monotonically decreasing for .
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Property (3): By definition, . Taking of both sides:
because is the inverse of .
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Property (4):
Using the addition theorem for :
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Property (5): (Exercise)
Convergence of Function Sequences
Let be a set. A function sequence (real-valued) is a mapping:
where is the set of functions from to . Thus, each is a function .
We write a function sequence as or simply .
For each , we obtain a sequence of real numbers .
Definition: Pointwise Convergence
The function sequence converges pointwise to a function if for all :
Example: Pointwise Convergence of
Let , and for . Does converge pointwise?
For : . For : .
Thus, converges pointwise to a function defined by:
Remark: The limit function is not continuous on (it is discontinuous at ). (Namely, discontinuous at 1).
Definition: Uniform Convergence
The sequence of functions converges uniformly (in ) to if:
is independent of !
Compare with pointwise convergence:
may depend on !
Visualization of Uniform Convergence
Imagine a function and an “-tube” around it, defined by and . For uniform convergence, for any given , there exists an such that for all , the graph of lies completely within this -tube around for all in the domain .
Uniform Convergence Condition:
Example Again: Non-Uniform Convergence
Consider again on , with pointwise limit function .
Sketch the -tube around . For any , the function for will, near , leave the -tube around .
Explanation: For every , leaves the -tube around near .
Therefore, does not converge uniformly to on . The convergence is only pointwise, not uniform.