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In mathematics in general, a
characterization theorem In mathematics, a characterization of an object is a set of conditions that, while different from the definition of the object, is logically equivalent to it. To say that "Property ''P'' characterizes object ''X''" is to say that not only does ''X' ...
says that a particular object – a function, a space, etc. – is the only one that possesses properties specified in the theorem. A characterization of a probability distribution accordingly states that it is the only
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomeno ...
that satisfies specified conditions. More precisely, the model of characterization of probability distribution was described by in such manner. On the probability space we define the space \mathcal=\ of random variables with values in measurable metric space (U,d_) and the space \mathcal=\ of random variables with values in measurable metric space (V,d_). By characterizations of probability distributions we understand general problems of description of some set \mathcal in the space \mathcal by extracting the sets \mathcal \subseteq \mathcal and \mathcal \subseteq \mathcal which describe the properties of random variables X \in\mathcal and their images Y=\mathbfX \in \mathcal , obtained by means of a specially chosen mapping \mathbf:\mathcal \to \mathcal .
The description of the properties of the random variables X and of their images Y=\mathbfX is equivalent to the indication of the set \mathcal \subseteq \mathcal from which X must be taken and of the set \mathcal \subseteq \mathcal into which its image must fall. So, the set which interests us appears therefore in the following form: : X\in\mathcal, \mathbf X \in \mathcal \Leftrightarrow X \in \mathcal, i.e. \mathcal = \mathbf^ \mathcal, where \mathbf^ \mathcal denotes the complete inverse image of \mathcal in \mathcal. This is the general model of characterization of probability distribution. Some examples of characterization theorems: * The assumption that two linear (or non-linear) statistics are identically distributed (or independent, or have a constancy regression and so on) can be used to characterize various populations.A. M. Kagan, Yu. V. Linnik and C. Radhakrishna Rao (1973)
Characterization Problems in Mathematical Statistics
John Wiley and Sons, New York, XII+499 pages.
For example, according to George Pólya's characterization theorem, if X_1 and X_2 are
independent Independent or Independents may refer to: Arts, entertainment, and media Artist groups * Independents (artist group), a group of modernist painters based in the New Hope, Pennsylvania, area of the United States during the early 1930s * Independe ...
identically distributed
random variable A random variable (also called random quantity, aleatory variable, or stochastic variable) is a mathematical formalization of a quantity or object which depends on random events. It is a mapping or a function from possible outcomes (e.g., the p ...
s with finite
variance In probability theory and statistics, variance is the expectation of the squared deviation of a random variable from its population mean or sample mean. Variance is a measure of dispersion, meaning it is a measure of how far a set of number ...
, then the statistics S_1 = X_1 and S_2 = \cfrac are identically distributed if and only if X_1 and X_2 have a normal distribution with zero mean. In this case :: \mathbf = \begin 1 & 0 \\ 1/\sqrt & 1/\sqrt \end , : \mathcal is a set of random two-dimensional column-vectors with independent identically distributed components, \mathcal is a set of random two-dimensional column-vectors with identically distributed components and \mathcal is a set of two-dimensional column-vectors with independent identically distributed normal components. * According to generalized George Pólya's characterization theorem (without condition on finiteness of variance ) if X_1 , X_2 , \dots, X_n are non-degenerate independent identically distributed random variables, statistics X_1 and a_1X_1 + a_2X_2 + \dots + a_nX_n are identically distributed and \left , a_j \right \vert < 1, a_1^2 + a_2^2 + \dots + a_n^2 = 1 , then X_j is normal random variable for any j, j=1,2, \dots, n . In this case :: \mathbf = \begin 1 & 0 & \dots & 0\\ a_1 & a_2 & \dots & a_n \end , : \mathcal is a set of random ''n''-dimensional column-vectors with independent identically distributed components, \mathcal is a set of random two-dimensional column-vectors with identically distributed components and \mathcal is a set of ''n''-dimensional column-vectors with independent identically distributed normal components. * All probability distributions on the half-line \left memoryless are exponential distribution">memorylessness.html" ;"title="0, \infty \right ) that are memorylessness">memoryless are exponential distributions. "Memoryless" means that if X is a random variable with such a distribution, then for any numbers 0 < y < x , :: \Pr(X > x\mid X>y) = \Pr(X>x-y) .
Verification of conditions of characterization theorems in practice is possible only with some error \epsilon , i.e., only to a certain degree of accuracy.Romanas Januškevičius, R. Yanushkevichius.
Stability characterizations of some probability distributions.
Saarbrücken, LAP LAMBERT Academic Publishing, 2014.
Such a situation is observed, for instance, in the cases where a sample of finite size is considered. That is why there arises the following natural question. Suppose that the conditions of the characterization theorem are fulfilled not exactly but only approximately. May we assert that the conclusion of the theorem is also fulfilled approximately? The theorems in which the problems of this kind are considered are called stability characterizations of probability distributions.


See also

* Characterization (mathematics)


References

{{reflist Characterization of probability distributions, Probability theorems Theorems in statistics