Heath–Jarrow–Morton framework: Difference between revisions

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Many [[probability distribution]]s are so important in theory or applications that they have been given specific names.
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==Discrete distributions==
 
[[Image:Binomial distribution pmf.svg|thumb|[[Binomial distribution]]]]
[[Image:Degenerate distribution PMF.png|thumb|[[Degenerate distribution]]]]
===With finite support===
* The [[Bernoulli distribution]], which takes value 1 with probability ''p'' and value 0 with probability ''q'' = 1 &minus; ''p''.
* The [[Rademacher distribution]], which takes value 1 with probability 1/2 and value &minus;1 with probability 1/2.
* The [[binomial distribution]], which describes the number of successes in a series of independent Yes/No experiments all with the same probability of success.
* The [[beta-binomial model|beta-binomial distribution]], which describes the number of successes in a series of independent Yes/No experiments with heterogeneity in the success probability.
* The [[degenerate distribution]] at ''x''<sub>0</sub>, where ''X'' is certain to take the value ''x<sub>0</sub>''. 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 [[Uniform distribution (discrete)|discrete uniform distribution]], where all elements of a finite [[set theory|set]] are equally likely. This is the theoretical distribution model for a balanced coin, an unbiased die, a casino roulette, or the first card of a well-shuffled deck.
* The [[hypergeometric distribution]], which describes the number of successes in the first ''m'' of a series of ''n'' consecutive Yes/No experiments, if the total number of successes is known. This distribution arises when there is no replacement.
* The [[Poisson binomial distribution]], which describes the number of successes in a series of independent Yes/No experiments with different success probabilities.
*[[Fisher's noncentral hypergeometric distribution]]
*[[Wallenius' noncentral hypergeometric distribution]]
*[[Benford's law]], which describes the frequency of the first digit of many naturally occurring data.
 
[[Image:Poisson pmf.svg|thumb|[[Poisson distribution]]]]
[[Image:SkellamDistribution.png|thumb|[[Skellam distribution]]]]
 
===With infinite support===
* The [[beta negative binomial distribution]]
* 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 continuous analogue. Special cases include:
** The [[Gibbs distribution]]
** The [[Maxwell&ndash;Boltzmann distribution]]
* The [[Borel distribution]]
* The [[extended negative binomial distribution]]
* The [[extended hypergeometric distribution]]
* The [[generalized log-series distribution]]
* 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, or alternatively only the number of losses before the first success (i.e. one less).
* The [[hypergeometric distribution]]
* The [[logarithmic distribution|logarithmic (series) distribution]]
* The [[negative binomial distribution]] or Pascal distribution a generalization of the geometric distribution to the ''n''th success.
* The [[parabolic fractal distribution]]
* The [[Poisson distribution]], which describes a very large number of individually unlikely events that happen in a certain time interval. Related to this distributions are a number of other distributions: the displaced Poisson, the hyper-Poisson, the general Poisson binomial and the Poisson type distributions.
** The [[Conway&ndash;Maxwell&ndash;Poisson distribution]], a two-parameter extension of the [[Poisson distribution]] with an adjustable rate of decay.
* The [[Polya-Eggenberger distribution]]
* The [[Skellam distribution]], the distribution of the difference between two independent Poisson-distributed random variables.
* The [[skew elliptical distribution]]
* The [[skew normal distribution]]
* The [[Yule–Simon distribution]]
* The [[zeta distribution]] has uses in applied statistics and statistical mechanics, and perhaps may be of interest to number theorists. It is the [[Zipf distribution]] for an infinite number of elements.
* [[Zipf's law]] or the Zipf distribution. A discrete [[power law|power-law]] distribution, the most famous example of which is the description of the frequency of words in the English language.
* The [[Zipf–Mandelbrot law]] is a discrete power law distribution which is a generalization of the [[Zipf distribution]].
 
==Continuous distributions==
 
[[Image:Beta distribution pdf.png|thumb|[[Beta distribution]]]]
[[Image:Uniform_distribution_PDF.png|thumb|[[Uniform distribution (continuous)|Continuous uniform distribution]]]]
===Supported on a bounded interval===
* The [[Arcsine distribution]] on [a,b], which is a special case of the Beta distribution if a=0 and b=1.
* The [[Beta distribution]] on [0,1], of which the uniform distribution is a special case, and which is useful in estimating success probabilities.
* The [[Logitnormal|Logitnormal distribution]] on (0,1).
* The [[Dirac delta function]] although not strictly a function, is a limiting form of many continuous probability functions.  It represents a ''discrete'' probability distribution concentrated at 0 &mdash; a [[degenerate distribution]] &mdash; but the notation treats it as if it were a continuous distribution.
* The [[Uniform distribution (continuous)|continuous uniform distribution]] on [''a'',''b''], where all points in a finite interval are equally likely.
** The [[rectangular distribution]] is a uniform distribution on [-1/2,1/2].
* The [[Irwin-Hall distribution]] is the distribution of the sum of ''n'' i.i.d. U(0,1) random variables.
* The [[Kent distribution]] on the three-dimensional sphere.
* The [[Kumaraswamy distribution]] is as versatile as the Beta distribution but has simple closed forms for both the cdf and the pdf.
* The [[logarithmic distribution (continuous)]]
* The PERT distribution is a special case of the [[beta distribution]]
* The [[raised cosine distribution]] on [<math>\mu-s,\mu+s</math>]
* The [[reciprocal distribution]]
* The [[triangular distribution]] on [''a'', ''b''], a special case of which is the distribution of the sum of two independent uniformly distributed random variables (the ''convolution'' of two uniform distributions).
* The [[trapezoidal distribution]]
* The [[truncated normal distribution]] on [''a'', ''b''].
* The [[U-quadratic distribution]] on [''a'', ''b''].
* The [[von Mises distribution]] on the circle.
* The [[von Mises-Fisher distribution]] on the N-dimensional sphere has the [[von Mises distribution]] as a special case.
* The [[Wigner semicircle distribution]] is important in the theory of [[random matrices]].
 
[[Image:Chi-square distributionPDF.png|thumb|[[Chi-squared distribution]]]]
<!-- [[Image:Exponential distribution pdf.png|thumb|[[Exponential distribution]]]] -->
[[Image:Gamma distribution pdf.svg|thumb|[[Gamma distribution]]]]
[[Image:PDF_of_Pareto_Distribution.svg|thumb|[[Pareto distribution]]]]
 
===Supported on semi-infinite intervals, usually <nowiki>[0,&infin;)</nowiki>===
* The [[Beta prime distribution]]
* The [[Birnbaum–Saunders distribution]],  also known as the fatigue life distribution, is a probability distribution used extensively in reliability applications to model failure times.
* The [[chi distribution]]
** The [[noncentral chi distribution]]
* The [[chi-squared 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 [[inverse-chi-squared distribution]]
** The [[noncentral chi-squared distribution]]
** The [[Scaled-inverse-chi-squared distribution]]
* The [[Dagum distribution]]
* The [[exponential distribution]], which describes the time between consecutive rare random events in a process with no memory.
* The [[F-distribution]], which is the distribution of the ratio of two (normalized) chi-squared distributed random variables,<!-- huh? --> used in the [[analysis of variance]]. It is referred to as the [[beta prime distribution]] when it is the ratio of two chi-squared variates which are not normalized by dividing them by their numbers of degrees of freedom.
** The [[noncentral F-distribution]]
* [[Fisher's z-distribution]]
* The [[folded normal distribution]]
* The [[Fréchet distribution]]
* 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 [[inverse-gamma distribution]]
* The [[generalized Pareto distribution]]
* The [[Gamma/Gompertz distribution]]
* The [[Gompertz distribution]]
* The [[half-normal distribution]]
* [[Hotelling's T-squared distribution]]
* The [[inverse Gaussian distribution]], also known as the Wald distribution
* The [[Lévy distribution]]
* The [[log-Cauchy distribution]]
* The [[log-gamma distribution]]
* The [[log-Laplace distribution]]
* The [[log-logistic distribution]]
* The [[log-normal distribution]], describing variables which can be modelled as the product of many small independent positive variables.
* The [[Mittag–Leffler distribution]]
* The [[Nakagami distribution]]
* The [[Pareto distribution]], or "power law" distribution, used in the analysis of financial data and critical behavior.
* The [[Pearson distribution|Pearson Type III distribution]]
* The [[phased bi-exponential distribution]] is commonly used in [[pharmokinetics]]
* The [[phased bi-Weibull distribution]]
* The [[Rayleigh distribution]]
* The [[Rayleigh mixture distribution]]
* The [[Rice distribution]]
* The [[shifted Gompertz distribution]]
* The [[type-2 Gumbel distribution]]
* The [[Weibull distribution]] or Rosin Rammler distribution, of which the [[exponential distribution]] is a special case, is used to model the lifetime of technical devices and is used to describe the [[particle size distribution]] of particles generated by grinding, [[Mill (grinding)|milling]] and [[crusher|crushing]] operations.
 
[[Image:Cauchy pdf.svg|thumb|[[Cauchy distribution]]]]
[[Image:Laplace distribution pdf.png|thumb|[[Laplace distribution]]]]
[[Image:LevyDistribution.png|thumb|[[Stable distribution]]]]
 
===Supported on the whole real line===
 
* The [[Behrens–Fisher distribution]], which arises in the [[Behrens–Fisher problem]].
* 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 function|Lorentzian profile]], and is associated with many processes, including [[resonance]] energy distribution, impact and natural [[spectral line]] broadening and quadratic [[stark effect|stark]] line broadening.
* [[Chernoff's distribution]]
* The [[Exponentially modified Gaussian distribution]], a convolution of a  [[normal distribution]] with an [[exponential distribution]].
* The [[Fisher–Tippett distribution|Fisher–Tippett]], extreme value, or log-Weibull distribution
** The [[Gumbel distribution]], a special case of the Fisher–Tippett distribution
* [[Fisher's z-distribution]]
* The [[generalized logistic distribution]]
* The [[generalized normal distribution]]
* The [[geometric stable distribution]]
* The [[Holtsmark distribution]], an example of a distribution that has a finite expected value but infinite variance.
* The [[hyperbolic distribution]]
* The [[hyperbolic secant distribution]]
* The [[Johnson SU distribution]]
* The [[Landau distribution]]
* The [[Laplace distribution]]
* The [[Lévy skew alpha-stable distribution]] or [[stable distribution]] is a family of distributions often used to characterize financial data and critical behavior; the [[Cauchy distribution]], [[Holtsmark distribution]], [[Landau distribution]], [[Lévy distribution]] and [[normal distribution]] are special cases.
* The [[Linnik distribution]]
* The [[logistic distribution]]
* The [[map-Airy distribution]]
* 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, identically distributed variables with finite [[mean]] and [[variance]] is approximately normal.
* The [[Normal-exponential-gamma distribution]]
* The [[Pearson Type IV distribution]] (see [[Pearson distribution]]s)
* The [[skew normal distribution]]
* [[Student's t-distribution]], useful for estimating unknown means of Gaussian populations.
** The [[noncentral t-distribution]]
* The [[type-1 Gumbel distribution]]
* The [[Voigt profile|Voigt distribution]], or Voigt profile, is the convolution of a [[normal distribution]] and a [[Cauchy distribution]]. It is found in spectroscopy when [[spectral line]] profiles are broadened by a mixture of [[Lorentzian function|Lorentzian]] and [[Doppler broadening|Doppler]] broadening mechanisms.
* The [[Gaussian minus exponential distribution]] is a convolution of a [[normal distribution]] with (minus) an [[exponential distribution]].
 
===With variable support===
* The [[generalized extreme value distribution]] has a finite upper bound or a finite lower bound depending on what range the value of one of the parameters of the distribution is in (or is supported on the whole real line for one special value of the parameter
* The [[generalized Pareto distribution]] has a support which is either bounded below only, or bounded both above and below
* The [[Tukey lambda distribution]] is either supported on the whole real line, or on a bounded interval, depending on what range the value of one of the parameters of the distribution is in.
*The [[Wakeby distribution]]
 
==Mixed discrete/continuous distributions==
* The [[rectified Gaussian distribution]] replaces negative values from a [[normal distribution]] with a discrete component at zero.
 
* The [[Tweedie_distributions|compound poisson-gamma or Tweedie distribution]] is continuous over the strictly positive real numbers, with a mass at zero.
 
==Joint distributions==
 
For any set of [[Statistical independence|independent]] random variables the [[probability density function]] of their [[joint distribution]] is the product of their individual density functions.
 
===Two or more random variables on the same sample space===
 
* The [[Dirichlet distribution]], a generalization of the [[beta distribution]].
* The [[Ewens's sampling formula]] is a probability distribution on the set of all [[integer partition|partitions of an integer]] ''n'', arising in [[population genetics]].
* The [[Balding–Nichols model]]
* The [[multinomial distribution]], a generalization of the [[binomial distribution]].
* The [[multivariate normal distribution]], a generalization of the [[normal distribution]].
* The [[negative multinomial distribution]], a generalization of the [[negative binomial distribution]].
* The [[generalized multivariate log-gamma distribution]]
 
===Matrix-valued distributions===
 
* The [[Wishart distribution]]
* The [[inverse-Wishart distribution]]
* The [[matrix normal distribution]]
* The [[matrix t-distribution]]
 
==Non-numeric distributions==
* The [[categorical distribution]]
 
==Miscellaneous distributions==
 
* The [[Cantor distribution]]
* The [[generalized logistic distribution]] family
* The [[Pearson distribution]] family
* The [[phase-type distribution]]
 
== See also ==
 
* [[Mixture distribution]]
* [[Cumulative distribution function]]
* [[Likelihood function]]
* [[List of statistical topics]]
* [[Probability density function]]
* [[Random variable]]
* [[Histogram]]
* [[Truncated distribution]]
* [[Copula (statistics)]]
* [[Probability distribution]]
* [[Relationships among probability distributions]]
 
{{Statistics}}
{{ProbDistributions}}
 
[[Category:Statistics-related lists|Probability distributions]]
 
{{Link FL|de}}

Latest revision as of 21:45, 12 December 2014

The author is known as Irwin Wunder but it's not the most masucline title out there. Hiring is her day job now but she's always wanted her own business. Her family life in Minnesota. One of the very very best things in the globe for me is to do aerobics and I've been performing it for quite a whilst.

my website; at home std testing (More Tips)