What does test mean in distribution theory

In summary, test functions in distribution theory are infinitely smooth functions with compact support. They are used to differentiate any function an infinite number of times and to obtain weak solutions for a singular or any other ugly differential equation. Furthermore, the spectrum of an operator is the set of all \lambda such that the operator T - \lambda is not invertible. This means that if you have a subspace T of a Hilbert space, then H* is a subspace of T*.
  • #1
kzhu
11
0
What does "test" mean in distribution theory

Dear all,

I am recently exposed to the distribution theory. Why are "test" functions called "test" functions? What are they testing for? or What are they tested for?

Why do we need to introduce the idea of distribution? It is merely for explaining the application of delta function in a more rigorous manner?

Thank you for clarifying this.

kzhu
 
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  • #2


A test function in distribution theory is simply an infinitely smooth function, which is zero outside some interval. This enables us to differentiate any function an infinite number of times in the distributional sense. This in turn allows us to obtain weak solutions for a singular or any other ugly differential equation.
 
  • #3


Thank you for the clarification.
 
  • #4


On a second thought, would "distribution basis function" be a more descriptive name? I have also find the name "tempered function" difficult to grasp.
 
  • #5


defunc said:
A test function in distribution theory is simply an infinitely smooth function, which is zero outside some interval.
Not just some interval, but a compact interval. In other words, test functions are smooth functions with compact support.
 
  • #6


Is there 'something' stronger than a distribution ??, i mean perhaps there are expressions that can not be handled even with distribution theory
 
  • #7


Why do we want a bigger space?

There are various reasons why, when working with an infinite-dimensional Hilbert space, one might desire to have "more" vectors available. I can think of two off the top of my head:

. You want differentiation to be an operator. (In common cases, it's only a partial operator)
. You want every operator to have enough eigenvectors

Let me clarify that last point -- the spectrum of an operator T is the set of all [itex]\lambda[/itex] such that the operator [itex]T - \lambda[/itex] is not invertible.

In finite-dimensional linear algebra, this means [itex]\lambda[/itex] is an eigenvalue of T, and you can find associated eigenvectors v such that [itex]Tv = \lambda v[/itex]. If T is nice enough (or if we use generalized eigenvectors), we can find a set of T's eigenvectors that form a basis for our vector space. This is very convenient.

However, infinite-dimensional linear algebra doesn't have this feature. Operators still have a spectrum, but many don't have eigenvalues or eigenvectors. The position (partial) operator X of quantum mechanics is a typical example.

So, it is convenient to find a vector space larger than our Hilbert space that contains eigenvectors for our favorite operators.

How do we build a bigger space?

The easiest way to build a bigger space is via test functions. One of the key features of a Hilbert space H is that it is isomorphic to its dual space H*. If we pick a subspace T of H, then H* will be a subspace of T*.

Furthermore, many of the properties of T* are determined by the properties of T -- in particular, if an operator acts on T, it also acts on T*. For example:

. If T contains only differentiable functions, and is closed under differentiation, then differentiation acts on T. Therefore, differentiation acts on T* too -- every vector now has a derivative. (Even those from H; their derivatives aren't in H, but they are in T*)

. If T is the space of tempered distributions, then Fourier transform acts on T. Therefore, Fourier transform acts on T* too. This is very useful if you want to use Fourier analysis!
 

1. What is a test in distribution theory?

A test in distribution theory is a statistical procedure that is used to determine whether a set of data follows a specific probability distribution or not. It involves comparing the observed data to the expected values under a certain distribution and using statistical tests to assess the fit.

2. Why is testing for distribution important?

Testing for distribution is important because it allows us to determine the underlying distribution of a set of data. This information is useful in making predictions and drawing conclusions about the population from which the data was sampled. It also helps us to choose the appropriate statistical methods and make accurate inferences.

3. How is a test for distribution performed?

A test for distribution is performed by first specifying the null hypothesis, which is usually that the data follows a certain distribution. Then, a test statistic is calculated using the observed data and compared to a critical value from a distribution table. If the test statistic falls within the critical region, the null hypothesis is rejected, indicating that the data does not follow the specified distribution.

4. What are some commonly used tests for distribution?

Some commonly used tests for distribution include the Kolmogorov-Smirnov test, the Chi-square test, and the Anderson-Darling test. These tests compare the observed data to the expected values under a specific distribution and provide a measure of how well the data fits the distribution.

5. What are the limitations of using tests for distribution?

Tests for distribution have certain limitations, such as assuming that the data is independent and identically distributed, which may not always be the case in real-world scenarios. They also do not provide information on the shape of the distribution, only whether it follows a specific one or not. Additionally, some tests may be sensitive to sample size and may not be suitable for small datasets.

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