|
|
Line 1: |
Line 1: |
| | | Hi there, I am Alyson Boon although it is not the name on my beginning certification. My husband doesn't like it the way I do but what I truly like doing is caving but I don't have the time recently. My spouse and I live in Mississippi and I free psychic readings ([http://www.prograd.uff.br/novo/facts-about-growing-greater-organic-garden sneak a peek at this web-site]) love each working day living here. Invoicing is what I do for a living but I've usually wanted my personal business.<br><br>My web-site - [http://www.publicpledge.com/blogs/post/7034 online psychic] reader, [http://netwk.hannam.ac.kr/xe/data_2/85669 Get More Information], |
| In [[statistics]], the '''probability integral transform''' or '''transformation''' relates to the result that data values that are modelled as being [[random variable]]s from any given [[continuous distribution]] can be converted to random variables having a [[uniform distribution]].<ref name=Dodge/> This holds exactly provided that the distribution being used is the true distribution of the random variables; if the distribution is one fitted to the data the result will hold approximately in large samples.
| |
| | |
| The result is sometimes modified or extended so that the result of the transformation is a standard distribution other than the uniform distribution, such as the [[exponential distribution]].
| |
| | |
| ==Applications==
| |
| | |
| One use for the probability integral transform in statistical [[data analysis]] is to provide the basis for testing whether a set of observations can reasonably be modelled as arising from a specified distribution. Specifically, the probability integral transform is applied to construct an equivalent set of values, and a test is then made of whether a uniform distribution is appropriate for the constructed dataset. Examples of this are [[P-P plot]]s and [[Kolmogorov-Smirnov test]]s.
| |
| | |
| A second use for the transformation is in the theory related to [[Copula (statistics)|copulas]] which are a means of both defining and working with distributions for statistically dependent multivariate data. Here the problem of defining or manipulating a [[joint probability distribution]] for a set of random variables is simplified or reduced in apparent complexity by applying the probability integral transform to each of the components and then working with a joint distribution for which the marginal variables have uniform distributions.
| |
| | |
| A third use is based on applying the inverse of the probability integral transform to convert random variables from a uniform distribution to have a selected distribution: this is known as [[inverse transform sampling]].
| |
| | |
| ==Examples==
| |
| | |
| Suppose that a random variable ''X'' has a [[continuous distribution]] for which the [[cumulative distribution function]] is ''F''<sub>''X''</sub>. Then the random variable ''Y'' defined as
| |
| | |
| :<math>Y=F_X(X) \,,</math> | |
| has a uniform distribution.<ref name=Dodge>Dodge, Y. (2003) ''The Oxford Dictionary of Statistical Terms'', OUP. ISBN 0-19-920613-9</ref>
| |
| | |
| For an illustrative example, let ''X'' be a random variable with a standard normal distribution N(0,1) where <math>\operatorname{erf}(),</math> is the [[error function]]. Then its CDF is
| |
| | |
| :<math>\Phi(x) = \frac{1}{\sqrt{2\pi}} \int_{-\infty}^x e^{-t^2/2} \, dt
| |
| = \frac12\Big[\, 1 + \operatorname{erf}\Big(\frac{x}{\sqrt{2}}\Big)\,\Big],\quad x\in\mathbb{R}.
| |
| \,</math>
| |
| Then the new random variable ''Y'', defined by ''Y''=Φ(''X''), is uniformly distributed.
| |
| | |
| If X has an [[exponential distribution]] with unit mean, then
| |
| :<math>F(x)=1-\exp(-x),</math> | |
| and the immediate result of the probability integral transform is that
| |
| :<math>Y=1-\exp(-X)</math>
| |
| has a uniform distribution. However, the symmetry of the uniform distribution can then be used to show that
| |
| :<math>Y'=\exp(-X)</math>
| |
| also has a uniform distribution.
| |
| | |
| ==References==
| |
| <references/>
| |
| | |
| {{DEFAULTSORT:Probability Integral Transform}}
| |
| [[Category:Theory of probability distributions]]
| |
Hi there, I am Alyson Boon although it is not the name on my beginning certification. My husband doesn't like it the way I do but what I truly like doing is caving but I don't have the time recently. My spouse and I live in Mississippi and I free psychic readings (sneak a peek at this web-site) love each working day living here. Invoicing is what I do for a living but I've usually wanted my personal business.
My web-site - online psychic reader, Get More Information,