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In mathematics, a probability distribution 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.
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[a ≤
X ≤ b], 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
-
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. 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.
The so-called absolutely continuous distributions can be expressed by a probability density function: a non-negative Lebesgue integrable function f defined on the reals such that
-
for all a and b. That discrete distributions do not admit such a density is unsurprising, but there are
continuous distributions like the devil's staircase that also
do not admit a density.
The support of a distribution is the smallest closed set whose complement has probability zero.
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
- The degenerate distribution at
x0, where X is certain to take the value x0. This does not look random, but it
satisfies the definition of random variable. This is useful because
it puts deterministic variables and random variables in the same formalism.
- The discrete uniform distribution, where all elements
of a finite set are equally likely. This is supposed to be the distribution of
a balanced coin, an unbiased die, a casino roulette or a well-shuffled deck. Also, one can use measurements of quantum states to
generate uniform random variables. All these are "physical" or "mechanical" devices, subject to design flaws or perturbations, so
the uniform distribution is only an approximation of their behaviour. In digital computers, pseudo-random number generators are used to
produced a statistically random discrete uniform distribution.
- The Bernoulli distribution, which takes value 1
with probability p and value 0 with probability q=1-p.
- The binomial distribution, which describes the number
of successes in a series of independent Yes/No experiments.
- The hypergeometric distribution, which
describes the number of successes in the first m of a series of n independent Yes/No experiments, if the total
number of successes is known.
- With infinite support
- The geometric distribution, a discrete distribution
which describes the number of attempts needed to get the first success in a series of independent Yes/No experiments.
- The negative binomial distribution,
a generalization of the geometric distribution to the nth success.
- The Poisson distribution, which describes the number of
rare events that happen in a certain time interval.
- The Boltzmann distribution, a discrete distribution
important in statistical physics which describes the
probabilities of the various discrete energy levels of a system in thermal equilibrium. It has a contiuous analogue. Special cases include
- The zeta distribution has uses in applied statistics and
statistical mechanics, and perhaps may be of interest to number theorists.
- Continuous distributions
- Supported on a finite interval
- The uniform distribution on [a,b],
where all points in a finite interval are equally likely.
- The Beta distribution on [0,1], of which the uniform
distribution is a special case, and which is useful in estimating success probabilities.
- The Triangular distribution on [a, b]
- Supported on semi-infinite intervals, usually [0,∞)
- The exponential distribution, which describes
the time between consecutive rare random events in a process with no memory.
- The Gamma distribution, which describes the time until
n consecutive rare random events occur in a process with no memory.
- The Erlang distribution, which is a special case of the
gamma distribution with integral shape parameter, developed to predict waiting times in queuing systems.
- The Log-normal distribution, describing variables
which can be modelled as the product of many small independent positive variables.
- The Weibull distribution, of which the exponential
distribution is a special case, is used to model the lifetime of technical devices.
- The chi-square distribution, which is the sum of
the squares of n independent Gaussian random variables. It is a special case of the Gamma distribution, and it is used
in goodness-of-fit tests in statistics.
- The F-distribution, which is the distribution of the ratio of two
normally distributed random variables, used in the analysis of
variance.
- Supported on the whole real line
- The normal distribution, also called the Gaussian or the
bell curve. It is ubiquitous in nature and statistics due to the central limit theorem: every variable that can be modelled as a sum of many small independent
variables is approximately normal.
- Student's t-distribution, useful for
estimating unknown means of Gaussian populations.
- The Cauchy distribution, an example of a distribution
which does not have an expected value or a variance. In physics it is usually called a Lorentzian, and it is the distribution of the energy of an
unstable state in quantum mechanics. In particle physics, the extremely short-lived particles associated to such unstable states
are called resonances.
- Joint distributions
- Two or more random variables on the same sample space
- Matrix-valued distributions
- Wishart distribution
- Matrix normal distribution
- Matrix T
distribution
- Normal-inverse Wishart distribution
See also
list of statistical topics -- random variable -- cumulative distribution function -- probability density function -- likelihood
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