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Probability distribution

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In mathematics and statistics, a probability distribution, more properly called a probability distribution function, assigns to every interval of the real numbers a probability, so that the probability axioms are satisfied. In technical terms, a probability distribution is a probability measure whose domain is the Borel algebra on the reals.

A probability distribution is a special case of the more general notion of a probability measure, which is a function that assigns probabilities satisfying the Kolmogorov axioms to the measurable sets of a measurable space. Additionally, some authors define a distribution generally as the probability measure induced by a random variable X on its range - the probability of a set B is [P(X^(B))]. However, this article discusses only probability measures over the real numbers.

Every random variable gives rise to a probability distribution, and this distribution contains most of the important information about the variable. If X is a random variable, the corresponding probability distribution assigns to the interval [a, b] the probability Pr[aXb], i.e. the probability that the variable X will take a value in the interval [a, b].

The probability distribution of the variable X can be uniquely described by its cumulative distribution function F(x), which is defined by

[ F(x) = \Pr\left[ X le x right] ]
for any x in R.

A distribution is called discrete if its cumulative distribution function consists of a sequence of finite jumps, which means that it belongs to a discrete random variable X: a variable which can only attain values from a certain finite or countable set. By one convention, a distribution is called continuous if its cumulative distribution function is continuous, which means that it belongs to a random variable X for which Pr[ X = x ] = 0 for all x in R. Another convention reserves the term continuous probability distribution for absolutely continuous distributions. These can be expressed by a probability density function: a non-negative Lebesgue integrable function f defined on the real numbers such that

[\Pr \left[ a le X le b right] = \int_a^b f(x)\,dx]
for all a and b. Of course, discrete distributions do not admit such a density; there also exist some continuous distributions like the devil's staircase that do not admit a density.

List of important probability distributions

Several probability distributions are so important in theory or applications that they have been given specific names:

Discrete distributions

With finite support

With infinite support

Continuous distributions

Supported on a bounded interval

as a special case.

Supported on semi-infinite intervals, usually [0,∞]

Supported on the whole real line

Joint distributions

For any set of independent random variables the probability density function of the joint distribution is the product of the individual ones.

Two or more random variables on the same sample space

Matrix-valued distributions

Miscellaneous distributions

See also

External links

 


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